---
_id: '25278'
abstract:
- lang: eng
  text: Using Service Function Chaining (SFC) in wireless networks became popular
    in many domains like networking and multimedia. It relies on allocating network
    resources to incoming SFCs requests, via a Virtual Network Embedding (VNE) algorithm,
    so that it optimizes the performance of the SFC. When the load of incoming requests
    -- competing for the limited network resources -- increases, it becomes challenging
    to decide which requests should be admitted and which one should be rejected.
    In this work, we propose a deep Reinforcement learning (RL) solution that can
    learn the admission policy for different dependencies, such as the service lifetime
    and the priority of incoming requests. We compare the deep RL solution to a first-come-first-serve
    baseline that admits a request whenever there are available resources. We show
    that deep RL outperforms the baseline and provides higher acceptance rate with
    low rejections even when there are enough resources.
author:
- first_name: Haitham
  full_name: Afifi, Haitham
  id: '65718'
  last_name: Afifi
- first_name: Fabian Jakob
  full_name: Sauer, Fabian Jakob
  last_name: Sauer
- first_name: Holger
  full_name: Karl, Holger
  id: '126'
  last_name: Karl
citation:
  ama: 'Afifi H, Sauer FJ, Karl H. Reinforcement Learning for Admission Control in
    Wireless Virtual Network Embedding. In: <i>2021 IEEE International Conference
    on Advanced Networks and Telecommunications Systems (ANTS) (ANTS’21)</i>. ; 2021.'
  apa: Afifi, H., Sauer, F. J., &#38; Karl, H. (2021). Reinforcement Learning for
    Admission Control in Wireless Virtual Network Embedding. <i>2021 IEEE International
    Conference on Advanced Networks and Telecommunications Systems (ANTS) (ANTS’21)</i>.
  bibtex: '@inproceedings{Afifi_Sauer_Karl_2021, place={Hyderabad, India}, title={Reinforcement
    Learning for Admission Control in Wireless Virtual Network Embedding}, booktitle={2021
    IEEE International Conference on Advanced Networks and Telecommunications Systems
    (ANTS) (ANTS’21)}, author={Afifi, Haitham and Sauer, Fabian Jakob and Karl, Holger},
    year={2021} }'
  chicago: Afifi, Haitham, Fabian Jakob Sauer, and Holger Karl. “Reinforcement Learning
    for Admission Control in Wireless Virtual Network Embedding.” In <i>2021 IEEE
    International Conference on Advanced Networks and Telecommunications Systems (ANTS)
    (ANTS’21)</i>. Hyderabad, India, 2021.
  ieee: H. Afifi, F. J. Sauer, and H. Karl, “Reinforcement Learning for Admission
    Control in Wireless Virtual Network Embedding,” 2021.
  mla: Afifi, Haitham, et al. “Reinforcement Learning for Admission Control in Wireless
    Virtual Network Embedding.” <i>2021 IEEE International Conference on Advanced
    Networks and Telecommunications Systems (ANTS) (ANTS’21)</i>, 2021.
  short: 'H. Afifi, F.J. Sauer, H. Karl, in: 2021 IEEE International Conference on
    Advanced Networks and Telecommunications Systems (ANTS) (ANTS’21), Hyderabad,
    India, 2021.'
date_created: 2021-10-04T10:42:20Z
date_updated: 2022-01-06T06:56:58Z
ddc:
- '000'
file:
- access_level: closed
  content_type: application/pdf
  creator: hafifi
  date_created: 2021-10-04T10:43:19Z
  date_updated: 2021-10-04T10:43:19Z
  file_id: '25279'
  file_name: Preprint___Reinforcement_Learning_for_Dynamic_Resource_Allocation_in_Wireless_Networks.pdf
  file_size: 534737
  relation: main_file
  success: 1
file_date_updated: 2021-10-04T10:43:19Z
has_accepted_license: '1'
keyword:
- reinforcement learning
- admission control
- wireless sensor networks
language:
- iso: eng
place: Hyderabad, India
project:
- _id: '27'
  name: Akustische Sensornetzwerke - Teilprojekt "Verteilte akustische Signalverarbeitung
    über funkbasierte Sensornetzwerke
publication: 2021 IEEE International Conference on Advanced Networks and Telecommunications
  Systems (ANTS) (ANTS'21)
status: public
title: Reinforcement Learning for Admission Control in Wireless Virtual Network Embedding
type: conference
user_id: '65718'
year: '2021'
...
---
_id: '25281'
abstract:
- lang: eng
  text: "Wireless Acoustic Sensor Networks (WASNs) have a wide range of audio signal
    processing applications. Due to the spatial diversity of the microphone and their
    relative position to the acoustic source, not all microphones are equally useful
    for subsequent audio signal processing tasks, nor do they all have the same wireless
    data transmission rates. Hence, a central task in WASNs is to balance a microphone’s
    estimated acoustic utility against its transmission delay, selecting a best-possible
    subset of microphones to record audio signals.\r\n\r\nIn this work, we use reinforcement
    learning to decide if a microphone should be used or switched off to maximize
    the acoustic quality at low transmission delays, while minimizing switching frequency.
    In experiments with moving sources in a simulated acoustic environment, our method
    outperforms naive baseline comparisons"
author:
- first_name: Haitham
  full_name: Afifi, Haitham
  id: '65718'
  last_name: Afifi
- first_name: Michael
  full_name: Guenther, Michael
  last_name: Guenther
- first_name: Andreas
  full_name: Brendel, Andreas
  last_name: Brendel
- first_name: Holger
  full_name: Karl, Holger
  id: '126'
  last_name: Karl
- first_name: Walter
  full_name: Kellermann, Walter
  last_name: Kellermann
citation:
  ama: 'Afifi H, Guenther M, Brendel A, Karl H, Kellermann W. Reinforcement Learning-based
    Microphone Selection in Wireless Acoustic Sensor Networks considering Network
    and Acoustic Utilities. In: <i>14. ITG Conference on Speech Communication (ITG
    2021)</i>. ; 2021.'
  apa: Afifi, H., Guenther, M., Brendel, A., Karl, H., &#38; Kellermann, W. (2021).
    Reinforcement Learning-based Microphone Selection in Wireless Acoustic Sensor
    Networks considering Network and Acoustic Utilities. <i>14. ITG Conference on
    Speech Communication (ITG 2021)</i>.
  bibtex: '@inproceedings{Afifi_Guenther_Brendel_Karl_Kellermann_2021, title={Reinforcement
    Learning-based Microphone Selection in Wireless Acoustic Sensor Networks considering
    Network and Acoustic Utilities}, booktitle={14. ITG Conference on Speech Communication
    (ITG 2021)}, author={Afifi, Haitham and Guenther, Michael and Brendel, Andreas
    and Karl, Holger and Kellermann, Walter}, year={2021} }'
  chicago: Afifi, Haitham, Michael Guenther, Andreas Brendel, Holger Karl, and Walter
    Kellermann. “Reinforcement Learning-Based Microphone Selection in Wireless Acoustic
    Sensor Networks Considering Network and Acoustic Utilities.” In <i>14. ITG Conference
    on Speech Communication (ITG 2021)</i>, 2021.
  ieee: H. Afifi, M. Guenther, A. Brendel, H. Karl, and W. Kellermann, “Reinforcement
    Learning-based Microphone Selection in Wireless Acoustic Sensor Networks considering
    Network and Acoustic Utilities,” 2021.
  mla: Afifi, Haitham, et al. “Reinforcement Learning-Based Microphone Selection in
    Wireless Acoustic Sensor Networks Considering Network and Acoustic Utilities.”
    <i>14. ITG Conference on Speech Communication (ITG 2021)</i>, 2021.
  short: 'H. Afifi, M. Guenther, A. Brendel, H. Karl, W. Kellermann, in: 14. ITG Conference
    on Speech Communication (ITG 2021), 2021.'
date_created: 2021-10-04T10:59:50Z
date_updated: 2022-01-06T06:56:59Z
ddc:
- '620'
file:
- access_level: closed
  content_type: application/pdf
  creator: hafifi
  date_created: 2021-10-04T10:58:07Z
  date_updated: 2021-10-04T10:58:07Z
  file_id: '25282'
  file_name: ITG_2021_paper_26 (3).pdf
  file_size: 283616
  relation: main_file
  success: 1
file_date_updated: 2021-10-04T10:58:07Z
has_accepted_license: '1'
keyword:
- microphone utility
- microphone selection
- wireless acoustic sensor network
- network delay
- reinforcement learning
language:
- iso: eng
project:
- _id: '27'
  name: Akustische Sensornetzwerke - Teilprojekt "Verteilte akustische Signalverarbeitung
    über funkbasierte Sensornetzwerke
publication: 14. ITG Conference on Speech Communication (ITG 2021)
status: public
title: Reinforcement Learning-based Microphone Selection in Wireless Acoustic Sensor
  Networks considering Network and Acoustic Utilities
type: conference
user_id: '65718'
year: '2021'
...
---
_id: '25293'
author:
- first_name: Michael
  full_name: Gunther, Michael
  last_name: Gunther
- first_name: Haitham
  full_name: Afifi, Haitham
  id: '65718'
  last_name: Afifi
- first_name: Andreas
  full_name: Brendel, Andreas
  last_name: Brendel
- first_name: Holger
  full_name: Karl, Holger
  id: '126'
  last_name: Karl
- first_name: Walter
  full_name: Kellermann, Walter
  last_name: Kellermann
citation:
  ama: 'Gunther M, Afifi H, Brendel A, Karl H, Kellermann W. Network-Aware Optimal
    Microphone Channel Selection in Wireless Acoustic Sensor Networks. In: <i>ICASSP
    2021 - 2021 IEEE International Conference on Acoustics, Speech and Signal Processing
    (ICASSP)</i>. ; 2021. doi:<a href="https://doi.org/10.1109/icassp39728.2021.9414528">10.1109/icassp39728.2021.9414528</a>'
  apa: Gunther, M., Afifi, H., Brendel, A., Karl, H., &#38; Kellermann, W. (2021).
    Network-Aware Optimal Microphone Channel Selection in Wireless Acoustic Sensor
    Networks. <i>ICASSP 2021 - 2021 IEEE International Conference on Acoustics, Speech
    and Signal Processing (ICASSP)</i>. <a href="https://doi.org/10.1109/icassp39728.2021.9414528">https://doi.org/10.1109/icassp39728.2021.9414528</a>
  bibtex: '@inproceedings{Gunther_Afifi_Brendel_Karl_Kellermann_2021, title={Network-Aware
    Optimal Microphone Channel Selection in Wireless Acoustic Sensor Networks}, DOI={<a
    href="https://doi.org/10.1109/icassp39728.2021.9414528">10.1109/icassp39728.2021.9414528</a>},
    booktitle={ICASSP 2021 - 2021 IEEE International Conference on Acoustics, Speech
    and Signal Processing (ICASSP)}, author={Gunther, Michael and Afifi, Haitham and
    Brendel, Andreas and Karl, Holger and Kellermann, Walter}, year={2021} }'
  chicago: Gunther, Michael, Haitham Afifi, Andreas Brendel, Holger Karl, and Walter
    Kellermann. “Network-Aware Optimal Microphone Channel Selection in Wireless Acoustic
    Sensor Networks.” In <i>ICASSP 2021 - 2021 IEEE International Conference on Acoustics,
    Speech and Signal Processing (ICASSP)</i>, 2021. <a href="https://doi.org/10.1109/icassp39728.2021.9414528">https://doi.org/10.1109/icassp39728.2021.9414528</a>.
  ieee: 'M. Gunther, H. Afifi, A. Brendel, H. Karl, and W. Kellermann, “Network-Aware
    Optimal Microphone Channel Selection in Wireless Acoustic Sensor Networks,” 2021,
    doi: <a href="https://doi.org/10.1109/icassp39728.2021.9414528">10.1109/icassp39728.2021.9414528</a>.'
  mla: Gunther, Michael, et al. “Network-Aware Optimal Microphone Channel Selection
    in Wireless Acoustic Sensor Networks.” <i>ICASSP 2021 - 2021 IEEE International
    Conference on Acoustics, Speech and Signal Processing (ICASSP)</i>, 2021, doi:<a
    href="https://doi.org/10.1109/icassp39728.2021.9414528">10.1109/icassp39728.2021.9414528</a>.
  short: 'M. Gunther, H. Afifi, A. Brendel, H. Karl, W. Kellermann, in: ICASSP 2021
    - 2021 IEEE International Conference on Acoustics, Speech and Signal Processing
    (ICASSP), 2021.'
date_created: 2021-10-04T12:28:40Z
date_updated: 2022-01-06T06:56:59Z
doi: 10.1109/icassp39728.2021.9414528
language:
- iso: eng
project:
- _id: '27'
  name: Akustische Sensornetzwerke - Teilprojekt "Verteilte akustische Signalverarbeitung
    über funkbasierte Sensornetzwerke
publication: ICASSP 2021 - 2021 IEEE International Conference on Acoustics, Speech
  and Signal Processing (ICASSP)
publication_status: published
status: public
title: Network-Aware Optimal Microphone Channel Selection in Wireless Acoustic Sensor
  Networks
type: conference
user_id: '65718'
year: '2021'
...
---
_id: '21478'
abstract:
- lang: eng
  text: 'In this work we use autonomous vehicles to improve the performance of Wireless
    Sensor Networks (WSNs). In contrast to other autonomous vehicle applications,
    WSNs have two metrics for performance evaluation. First, quality of information
    (QoI) which is used to measure the quality of sensed data (e.g., measurement uncertainties
    or signal strength). Second, quality of service (QoS) which is used to measure
    the network''s performance for data forwarding (e.g., delay and packet losses).
    As a use case, we consider wireless acoustic sensor networks, where a group of
    speakers move inside a room and there are autonomous vehicles installed with microphones
    for streaming the audio data. We formulate the problem as a Markov decision problem
    (MDP) and solve it using Deep-Q-Networks (DQN). Additionally, we compare the performance
    of DQN solution to two different real-world implementations: speakers holding/passing
    microphones and microphones being preinstalled in fixed positions. We show that
    the performance of autonomous vehicles in terms of QoI and QoS is better than
    the real-world implementation in some scenarios. Moreover, we study the impact
    of the vehicles speed on the learning process of the DQN solution and show how
    low speeds degrade the performance. Finally, we compare the DQN solution to a
    heuristic one and provide theoretical analysis of the performance with respect
    to dynamic WSNs.'
author:
- first_name: Haitham
  full_name: Afifi, Haitham
  id: '65718'
  last_name: Afifi
- first_name: Arunselvan
  full_name: Ramaswamy, Arunselvan
  id: '66937'
  last_name: Ramaswamy
  orcid: https://orcid.org/ 0000-0001-7547-8111
- first_name: Holger
  full_name: Karl, Holger
  id: '126'
  last_name: Karl
citation:
  ama: 'Afifi H, Ramaswamy A, Karl H. Reinforcement Learning for Autonomous Vehicle
    Movements in Wireless Sensor Networks. In: <i>2021 IEEE International Conference
    on Communications (ICC): IoT and Sensor Networks Symposium (IEEE ICC’21 - IoTSN
    Symposium)</i>. Montreal, Canada; 2021.'
  apa: 'Afifi, H., Ramaswamy, A., &#38; Karl, H. (2021). Reinforcement Learning for
    Autonomous Vehicle Movements in Wireless Sensor Networks. In <i>2021 IEEE International
    Conference on Communications (ICC): IoT and Sensor Networks Symposium (IEEE ICC’21
    - IoTSN Symposium)</i>. Montreal, Canada.'
  bibtex: '@inproceedings{Afifi_Ramaswamy_Karl_2021, place={Montreal, Canada}, title={Reinforcement
    Learning for Autonomous Vehicle Movements in Wireless Sensor Networks}, booktitle={2021
    IEEE International Conference on Communications (ICC): IoT and Sensor Networks
    Symposium (IEEE ICC’21 - IoTSN Symposium)}, author={Afifi, Haitham and Ramaswamy,
    Arunselvan and Karl, Holger}, year={2021} }'
  chicago: 'Afifi, Haitham, Arunselvan Ramaswamy, and Holger Karl. “Reinforcement
    Learning for Autonomous Vehicle Movements in Wireless Sensor Networks.” In <i>2021
    IEEE International Conference on Communications (ICC): IoT and Sensor Networks
    Symposium (IEEE ICC’21 - IoTSN Symposium)</i>. Montreal, Canada, 2021.'
  ieee: 'H. Afifi, A. Ramaswamy, and H. Karl, “Reinforcement Learning for Autonomous
    Vehicle Movements in Wireless Sensor Networks,” in <i>2021 IEEE International
    Conference on Communications (ICC): IoT and Sensor Networks Symposium (IEEE ICC’21
    - IoTSN Symposium)</i>, 2021.'
  mla: 'Afifi, Haitham, et al. “Reinforcement Learning for Autonomous Vehicle Movements
    in Wireless Sensor Networks.” <i>2021 IEEE International Conference on Communications
    (ICC): IoT and Sensor Networks Symposium (IEEE ICC’21 - IoTSN Symposium)</i>,
    2021.'
  short: 'H. Afifi, A. Ramaswamy, H. Karl, in: 2021 IEEE International Conference
    on Communications (ICC): IoT and Sensor Networks Symposium (IEEE ICC’21 - IoTSN
    Symposium), Montreal, Canada, 2021.'
date_created: 2021-03-12T16:02:04Z
date_updated: 2022-01-06T06:55:00Z
language:
- iso: eng
place: Montreal, Canada
project:
- _id: '27'
  name: Akustische Sensornetzwerke - Teilprojekt "Verteilte akustische Signalverarbeitung
    über funkbasierte Sensornetzwerke
publication: '2021 IEEE International Conference on Communications (ICC): IoT and
  Sensor Networks Symposium (IEEE ICC''21 - IoTSN Symposium)'
status: public
title: Reinforcement Learning for Autonomous Vehicle Movements in Wireless Sensor
  Networks
type: conference
user_id: '65718'
year: '2021'
...
---
_id: '21479'
abstract:
- lang: eng
  text: Two of the most important metrics when developing Wireless Sensor Networks
    (WSNs) applications are the Quality of Information (QoI) and Quality of Service
    (QoS). The former is used to specify the quality of the collected data by the
    sensors (e.g., measurements error or signal's intensity), while the latter defines
    the network's performance and availability (e.g., packet losses and latency).
    In this paper, we consider an example of wireless acoustic sensor networks, where
    we select a subset of microphones for two different objectives. First, we maximize
    the recording quality under QoS constraints. Second, we apply a trade-off between
    QoI and QoS. We formulate the problem as a constrained Markov Decision Problem
    (MDP) and solve it using reinforcement learning (RL). We compare the RL solution
    to a baseline model and show that in case of QoS-guarantee objective, the RL solution
    has an optimality gap up to 1\%. Meanwhile, the RL solution is better than the
    baseline with improvements up to 23\%, when using the trade-off objective.
author:
- first_name: Haitham
  full_name: Afifi, Haitham
  id: '65718'
  last_name: Afifi
- first_name: Arunselvan
  full_name: Ramaswamy, Arunselvan
  id: '66937'
  last_name: Ramaswamy
  orcid: https://orcid.org/ 0000-0001-7547-8111
- first_name: Holger
  full_name: Karl, Holger
  id: '126'
  last_name: Karl
citation:
  ama: 'Afifi H, Ramaswamy A, Karl H. A Reinforcement Learning QoI/QoS-Aware Approach
    in Acoustic Sensor Networks. In: <i>2021 IEEE 18th Annual Consumer Communications
    \&#38; Networking Conference (CCNC) (CCNC 2021)</i>. ; 2021.'
  apa: Afifi, H., Ramaswamy, A., &#38; Karl, H. (2021). A Reinforcement Learning QoI/QoS-Aware
    Approach in Acoustic Sensor Networks. In <i>2021 IEEE 18th Annual Consumer Communications
    \&#38; Networking Conference (CCNC) (CCNC 2021)</i>.
  bibtex: '@inproceedings{Afifi_Ramaswamy_Karl_2021, title={A Reinforcement Learning
    QoI/QoS-Aware Approach in Acoustic Sensor Networks}, booktitle={2021 IEEE 18th
    Annual Consumer Communications \&#38; Networking Conference (CCNC) (CCNC 2021)},
    author={Afifi, Haitham and Ramaswamy, Arunselvan and Karl, Holger}, year={2021}
    }'
  chicago: Afifi, Haitham, Arunselvan Ramaswamy, and Holger Karl. “A Reinforcement
    Learning QoI/QoS-Aware Approach in Acoustic Sensor Networks.” In <i>2021 IEEE
    18th Annual Consumer Communications \&#38; Networking Conference (CCNC) (CCNC
    2021)</i>, 2021.
  ieee: H. Afifi, A. Ramaswamy, and H. Karl, “A Reinforcement Learning QoI/QoS-Aware
    Approach in Acoustic Sensor Networks,” in <i>2021 IEEE 18th Annual Consumer Communications
    \&#38; Networking Conference (CCNC) (CCNC 2021)</i>, 2021.
  mla: Afifi, Haitham, et al. “A Reinforcement Learning QoI/QoS-Aware Approach in
    Acoustic Sensor Networks.” <i>2021 IEEE 18th Annual Consumer Communications \&#38;
    Networking Conference (CCNC) (CCNC 2021)</i>, 2021.
  short: 'H. Afifi, A. Ramaswamy, H. Karl, in: 2021 IEEE 18th Annual Consumer Communications
    \&#38; Networking Conference (CCNC) (CCNC 2021), 2021.'
date_created: 2021-03-12T16:03:53Z
date_updated: 2022-01-06T06:55:00Z
keyword:
- reinforcement learning
- wireless sensor networks
- resource allocation
- acoustic sensor networks
language:
- iso: eng
project:
- _id: '27'
  name: Akustische Sensornetzwerke - Teilprojekt "Verteilte akustische Signalverarbeitung
    über funkbasierte Sensornetzwerke
publication: 2021 IEEE 18th Annual Consumer Communications \& Networking Conference
  (CCNC) (CCNC 2021)
status: public
title: A Reinforcement Learning QoI/QoS-Aware Approach in Acoustic Sensor Networks
type: conference
user_id: '65718'
year: '2021'
...
---
_id: '20164'
abstract:
- lang: eng
  text: Upcoming sensing applications (acoustic or video) will have high processing
    requirements not satisfiable by a single node or need input from multiple sources
    (e.g., speaker localization). Offloading these applications to cloud or mobile
    edge is an option, but when running in a wireless senor network (WSN), it might
    entail needlessly high data rate and latency. An alternative is to spread processing
    inside the WSN, which is particularly attractive if the application comprises
    individual components. This scenario is typical for applications like acoustic
    signal processing. Mapping components to nodes can be formulated as wireless version
    of the NP-hard Virtual Network Embedding (VNE) problem, for which various heuristics
    exist. We propose a Reinforcement Learning (RL) framework, which relies on Q-Learning
    and uses either Greedy Epsilon or Epsilon Decay for exploration. We compare both
    exploration methods to the result of an optimization approach and show empirically
    that the RL framework achieves good results in terms of network delay within few
    number of steps.
author:
- first_name: Haitham
  full_name: Afifi, Haitham
  id: '65718'
  last_name: Afifi
- first_name: Holger
  full_name: Karl, Holger
  id: '126'
  last_name: Karl
citation:
  ama: 'Afifi H, Karl H. Reinforcement Learning for Virtual Network Embedding in Wireless
    Sensor Networks. In: <i>2020 Thirteenth International Workshop on Selected Topics
    in Mobile and Wireless Computing (STWiMob’2020)</i>. Thessaloniki, Greece; 2020.'
  apa: Afifi, H., &#38; Karl, H. (2020). Reinforcement Learning for Virtual Network
    Embedding in Wireless Sensor Networks. In <i>2020 Thirteenth International Workshop
    on Selected Topics in Mobile and Wireless Computing (STWiMob’2020)</i>. Thessaloniki,
    Greece.
  bibtex: '@inproceedings{Afifi_Karl_2020, place={Thessaloniki, Greece}, title={Reinforcement
    Learning for Virtual Network Embedding in Wireless Sensor Networks}, booktitle={2020
    Thirteenth International Workshop on Selected Topics in Mobile and Wireless Computing
    (STWiMob’2020)}, author={Afifi, Haitham and Karl, Holger}, year={2020} }'
  chicago: Afifi, Haitham, and Holger Karl. “Reinforcement Learning for Virtual Network
    Embedding in Wireless Sensor Networks.” In <i>2020 Thirteenth International Workshop
    on Selected Topics in Mobile and Wireless Computing (STWiMob’2020)</i>. Thessaloniki,
    Greece, 2020.
  ieee: H. Afifi and H. Karl, “Reinforcement Learning for Virtual Network Embedding
    in Wireless Sensor Networks,” in <i>2020 Thirteenth International Workshop on
    Selected Topics in Mobile and Wireless Computing (STWiMob’2020)</i>, 2020.
  mla: Afifi, Haitham, and Holger Karl. “Reinforcement Learning for Virtual Network
    Embedding in Wireless Sensor Networks.” <i>2020 Thirteenth International Workshop
    on Selected Topics in Mobile and Wireless Computing (STWiMob’2020)</i>, 2020.
  short: 'H. Afifi, H. Karl, in: 2020 Thirteenth International Workshop on Selected
    Topics in Mobile and Wireless Computing (STWiMob’2020), Thessaloniki, Greece,
    2020.'
date_created: 2020-10-21T14:41:18Z
date_updated: 2022-01-06T06:54:20Z
language:
- iso: eng
place: Thessaloniki, Greece
project:
- _id: '27'
  name: Akustische Sensornetzwerke - Teilprojekt "Verteilte akustische Signalverarbeitung
    über funkbasierte Sensornetzwerke
publication: 2020 Thirteenth International Workshop on Selected Topics in Mobile and
  Wireless Computing (STWiMob'2020)
status: public
title: Reinforcement Learning for Virtual Network Embedding in Wireless Sensor Networks
type: conference
user_id: '65718'
year: '2020'
...
---
_id: '6860'
author:
- first_name: Haitham
  full_name: Afifi, Haitham
  id: '65718'
  last_name: Afifi
- first_name: Holger
  full_name: Karl, Holger
  id: '126'
  last_name: Karl
citation:
  ama: 'Afifi H, Karl H. Power Allocation with a Wireless Multi-cast Aware Routing
    for Virtual Network Embedding. In: <i>2019 16th IEEE Annual Consumer Communications
    &#38; Networking Conference (CCNC2019)</i>. Las Vegas: IEEE.'
  apa: 'Afifi, H., &#38; Karl, H. (n.d.). Power Allocation with a Wireless Multi-cast
    Aware Routing for Virtual Network Embedding. In <i>2019 16th IEEE Annual Consumer
    Communications &#38; Networking Conference (CCNC2019)</i>. Las Vegas: IEEE.'
  bibtex: '@inproceedings{Afifi_Karl, place={Las Vegas}, title={Power Allocation with
    a Wireless Multi-cast Aware Routing for Virtual Network Embedding}, booktitle={2019
    16th IEEE Annual Consumer Communications &#38; Networking Conference (CCNC2019)},
    publisher={IEEE}, author={Afifi, Haitham and Karl, Holger} }'
  chicago: 'Afifi, Haitham, and Holger Karl. “Power Allocation with a Wireless Multi-Cast
    Aware Routing for Virtual Network Embedding.” In <i>2019 16th IEEE Annual Consumer
    Communications &#38; Networking Conference (CCNC2019)</i>. Las Vegas: IEEE, n.d.'
  ieee: H. Afifi and H. Karl, “Power Allocation with a Wireless Multi-cast Aware Routing
    for Virtual Network Embedding,” in <i>2019 16th IEEE Annual Consumer Communications
    &#38; Networking Conference (CCNC2019)</i>.
  mla: Afifi, Haitham, and Holger Karl. “Power Allocation with a Wireless Multi-Cast
    Aware Routing for Virtual Network Embedding.” <i>2019 16th IEEE Annual Consumer
    Communications &#38; Networking Conference (CCNC2019)</i>, IEEE.
  short: 'H. Afifi, H. Karl, in: 2019 16th IEEE Annual Consumer Communications &#38;
    Networking Conference (CCNC2019), IEEE, Las Vegas, n.d.'
date_created: 2019-01-17T15:51:34Z
date_updated: 2022-01-06T07:03:22Z
ddc:
- '000'
department:
- _id: '75'
file:
- access_level: open_access
  content_type: application/pdf
  creator: hafifi
  date_created: 2019-01-17T15:49:37Z
  date_updated: 2019-01-17T15:49:37Z
  file_id: '6861'
  file_name: globecom.pdf
  file_size: 320283
  relation: main_file
file_date_updated: 2019-01-17T15:49:37Z
has_accepted_license: '1'
language:
- iso: eng
oa: '1'
place: Las Vegas
project:
- _id: '27'
  name: 'Akustische Sensornetzwerke - Teilprojekt '
- _id: '27'
  name: Akustische Sensornetzwerke - Teilprojekt "Verteilte akustische Signalverarbeitung
    über funkbasierte Sensornetzwerke
publication: 2019 16th IEEE Annual Consumer Communications & Networking Conference
  (CCNC2019)
publication_status: accepted
publisher: IEEE
status: public
title: Power Allocation with a Wireless Multi-cast Aware Routing for Virtual Network
  Embedding
type: conference
user_id: '65718'
year: '2019'
...
---
_id: '12880'
abstract:
- lang: eng
  text: By distributing the computational load over the nodes of a Wireless Acoustic
    Sensor Network (WASN), the real-time capability of the TRINICON (TRIple-N-Independent
    component analysis for CONvolutive mixtures) framework for Blind Source Separation
    (BSS) can be ensured, even if the individual network nodes are not powerful enough
    to run TRINICON in real-time by themselves. To optimally utilize the limited computing
    power and data rate in WASNs, the MARVELO (Multicast-Aware Routing for Virtual
    network Embedding with Loops in Overlays) framework is expanded for use with TRINICON,
    while a feature-based selection scheme is proposed to exploit the most beneficial
    parts of the input signal for adapting the demixing system. The simulation results
    of realistic scenarios show only a minor degradation of the separation performance
    even in heavily resource-limited situations.
author:
- first_name: Michael
  full_name: Guenther, Michael
  last_name: Guenther
- first_name: Haitham
  full_name: Afifi, Haitham
  id: '65718'
  last_name: Afifi
- first_name: Andreas
  full_name: Brendel, Andreas
  last_name: Brendel
- first_name: Holger
  full_name: Karl, Holger
  id: '126'
  last_name: Karl
- first_name: Walter
  full_name: Kellermann, Walter
  last_name: Kellermann
citation:
  ama: 'Guenther M, Afifi H, Brendel A, Karl H, Kellermann W. Sparse Adaptation of
    Distributed Blind Source Separation in Acoustic Sensor Networks. In: <i>2019 IEEE
    Workshop on Applications of Signal Processing to Audio and Acoustics (WASPAA)
    (WASPAA 2019)</i>. New Paltz, USA; 2019.'
  apa: Guenther, M., Afifi, H., Brendel, A., Karl, H., &#38; Kellermann, W. (2019).
    Sparse Adaptation of Distributed Blind Source Separation in Acoustic Sensor Networks.
    In <i>2019 IEEE Workshop on Applications of Signal Processing to Audio and Acoustics
    (WASPAA) (WASPAA 2019)</i>. New Paltz, USA.
  bibtex: '@inproceedings{Guenther_Afifi_Brendel_Karl_Kellermann_2019, place={New
    Paltz, USA}, title={Sparse Adaptation of Distributed Blind Source Separation in
    Acoustic Sensor Networks}, booktitle={2019 IEEE Workshop on Applications of Signal
    Processing to Audio and Acoustics (WASPAA) (WASPAA 2019)}, author={Guenther, Michael
    and Afifi, Haitham and Brendel, Andreas and Karl, Holger and Kellermann, Walter},
    year={2019} }'
  chicago: Guenther, Michael, Haitham Afifi, Andreas Brendel, Holger Karl, and Walter
    Kellermann. “Sparse Adaptation of Distributed Blind Source Separation in Acoustic
    Sensor Networks.” In <i>2019 IEEE Workshop on Applications of Signal Processing
    to Audio and Acoustics (WASPAA) (WASPAA 2019)</i>. New Paltz, USA, 2019.
  ieee: M. Guenther, H. Afifi, A. Brendel, H. Karl, and W. Kellermann, “Sparse Adaptation
    of Distributed Blind Source Separation in Acoustic Sensor Networks,” in <i>2019
    IEEE Workshop on Applications of Signal Processing to Audio and Acoustics (WASPAA)
    (WASPAA 2019)</i>, 2019.
  mla: Guenther, Michael, et al. “Sparse Adaptation of Distributed Blind Source Separation
    in Acoustic Sensor Networks.” <i>2019 IEEE Workshop on Applications of Signal
    Processing to Audio and Acoustics (WASPAA) (WASPAA 2019)</i>, 2019.
  short: 'M. Guenther, H. Afifi, A. Brendel, H. Karl, W. Kellermann, in: 2019 IEEE
    Workshop on Applications of Signal Processing to Audio and Acoustics (WASPAA)
    (WASPAA 2019), New Paltz, USA, 2019.'
date_created: 2019-07-24T07:25:01Z
date_updated: 2022-01-06T06:51:22Z
department:
- _id: '75'
language:
- iso: eng
place: New Paltz, USA
project:
- _id: '27'
  name: 'Akustische Sensornetzwerke - Teilprojekt '
- _id: '27'
  name: Akustische Sensornetzwerke - Teilprojekt "Verteilte akustische Signalverarbeitung
    über funkbasierte Sensornetzwerke
publication: 2019 IEEE Workshop on Applications of Signal Processing to Audio and
  Acoustics (WASPAA) (WASPAA 2019)
status: public
title: Sparse Adaptation of Distributed Blind Source Separation in Acoustic Sensor
  Networks
type: conference
user_id: '65718'
year: '2019'
...
---
_id: '12881'
abstract:
- lang: eng
  text: Internet of Things (IoT) applications witness an exceptional evolution of
    traffic demands, while existing protocols, as seen in wireless sensor networks
    (WSNs), struggle to cope with these demands. Traditional protocols rely on finding
    a routing path between sensors generating data and sinks acting as gateway or
    databases. Meanwhile, the network will suffer from high collisions in case of
    high data rates. In this context, in-network processing solutions are used to
    leverage the wireless nodes' computations, by distributing processing tasks on
    the nodes along the routing path. Although in-network processing solutions are
    very popular in wired networks (e.g., data centers and wide area networks), there
    are many challenges to adopt these solutions in wireless networks, due to the
    interference problem. In this paper, we solve the problem of routing and task
    distribution jointly using a greedy Virtual Network Embedding (VNE) algorithm,
    and consider power control as well. Through simulations, we compare the proposed
    algorithm to optimal solutions and show that it achieves good results in terms
    of delay. Moreover, we discuss its sub-optimality by driving tight lower bounds
    and loose upper bounds. We also compare our solution with another wireless VNE
    solution to show the trade-off between delay and symbol error rate.
author:
- first_name: Haitham
  full_name: Afifi, Haitham
  id: '65718'
  last_name: Afifi
- first_name: Holger
  full_name: Karl, Holger
  id: '126'
  last_name: Karl
citation:
  ama: 'Afifi H, Karl H. An Approximate Power Control Algorithm for a Multi-Cast Wireless
    Virtual Network Embedding. In: <i>2019 12th IFIP Wireless and Mobile Networking
    Conference (WMNC) (WMNC’19)</i>. Paris, France; 2019.'
  apa: Afifi, H., &#38; Karl, H. (2019). An Approximate Power Control Algorithm for
    a Multi-Cast Wireless Virtual Network Embedding. In <i>2019 12th IFIP Wireless
    and Mobile Networking Conference (WMNC) (WMNC’19)</i>. Paris, France.
  bibtex: '@inproceedings{Afifi_Karl_2019, place={Paris, France}, title={An Approximate
    Power Control Algorithm for a Multi-Cast Wireless Virtual Network Embedding},
    booktitle={2019 12th IFIP Wireless and Mobile Networking Conference (WMNC) (WMNC’19)},
    author={Afifi, Haitham and Karl, Holger}, year={2019} }'
  chicago: Afifi, Haitham, and Holger Karl. “An Approximate Power Control Algorithm
    for a Multi-Cast Wireless Virtual Network Embedding.” In <i>2019 12th IFIP Wireless
    and Mobile Networking Conference (WMNC) (WMNC’19)</i>. Paris, France, 2019.
  ieee: H. Afifi and H. Karl, “An Approximate Power Control Algorithm for a Multi-Cast
    Wireless Virtual Network Embedding,” in <i>2019 12th IFIP Wireless and Mobile
    Networking Conference (WMNC) (WMNC’19)</i>, 2019.
  mla: Afifi, Haitham, and Holger Karl. “An Approximate Power Control Algorithm for
    a Multi-Cast Wireless Virtual Network Embedding.” <i>2019 12th IFIP Wireless and
    Mobile Networking Conference (WMNC) (WMNC’19)</i>, 2019.
  short: 'H. Afifi, H. Karl, in: 2019 12th IFIP Wireless and Mobile Networking Conference
    (WMNC) (WMNC’19), Paris, France, 2019.'
date_created: 2019-07-24T07:25:28Z
date_updated: 2022-01-06T06:51:22Z
department:
- _id: '75'
language:
- iso: eng
place: Paris, France
project:
- _id: '27'
  name: Akustische Sensornetzwerke - Teilprojekt "Verteilte akustische Signalverarbeitung
    über funkbasierte Sensornetzwerke
publication: 2019 12th IFIP Wireless and Mobile Networking Conference (WMNC) (WMNC'19)
status: public
title: An Approximate Power Control Algorithm for a Multi-Cast Wireless Virtual Network
  Embedding
type: conference
user_id: '65718'
year: '2019'
...
---
_id: '12882'
abstract:
- lang: eng
  text: One of the major challenges in implementing wireless virtualization is the
    resource discovery. This is particularly important for the embedding-algorithms
    that are used to distribute the tasks to nodes. MARVELO is a prototype framework
    for executing different distributed algorithms on the top of a wireless (802.11)
    ad-hoc network. The aim of MARVELO is to select the nodes for running the algorithms
    and to define the routing between the nodes. Hence, it also supports monitoring
    functionalities to collect information about the available resources and to assist
    in profiling the algorithms. The objective of this demo is to show how MAVRLEO
    distributes tasks in an ad-hoc network, based on a feedback from our monitoring
    tool. Additionally, we explain the work-flow, composition and execution of the
    framework.
author:
- first_name: Haitham
  full_name: Afifi, Haitham
  id: '65718'
  last_name: Afifi
- first_name: Holger
  full_name: Karl, Holger
  id: '126'
  last_name: Karl
- first_name: Sebastian
  full_name: Eikenberg, Sebastian
  last_name: Eikenberg
- first_name: Arnold
  full_name: Mueller, Arnold
  last_name: Mueller
- first_name: Lars
  full_name: Gansel, Lars
  last_name: Gansel
- first_name: Alexander
  full_name: Makejkin, Alexander
  last_name: Makejkin
- first_name: Kai
  full_name: Hannemann, Kai
  last_name: Hannemann
- first_name: Rafael
  full_name: Schellenberg, Rafael
  last_name: Schellenberg
citation:
  ama: 'Afifi H, Karl H, Eikenberg S, et al. A Rapid Prototyping for Wireless Virtual
    Network Embedding using MARVELO. In: <i>2019 IEEE Wireless Communications and
    Networking Conference (WCNC) (IEEE WCNC 2019) (Demo)</i>. Marrakech, Morocco;
    2019.'
  apa: Afifi, H., Karl, H., Eikenberg, S., Mueller, A., Gansel, L., Makejkin, A.,
    … Schellenberg, R. (2019). A Rapid Prototyping for Wireless Virtual Network Embedding
    using MARVELO. In <i>2019 IEEE Wireless Communications and Networking Conference
    (WCNC) (IEEE WCNC 2019) (Demo)</i>. Marrakech, Morocco.
  bibtex: '@inproceedings{Afifi_Karl_Eikenberg_Mueller_Gansel_Makejkin_Hannemann_Schellenberg_2019,
    place={Marrakech, Morocco}, title={A Rapid Prototyping for Wireless Virtual Network
    Embedding using MARVELO}, booktitle={2019 IEEE Wireless Communications and Networking
    Conference (WCNC) (IEEE WCNC 2019) (Demo)}, author={Afifi, Haitham and Karl, Holger
    and Eikenberg, Sebastian and Mueller, Arnold and Gansel, Lars and Makejkin, Alexander
    and Hannemann, Kai and Schellenberg, Rafael}, year={2019} }'
  chicago: Afifi, Haitham, Holger Karl, Sebastian Eikenberg, Arnold Mueller, Lars
    Gansel, Alexander Makejkin, Kai Hannemann, and Rafael Schellenberg. “A Rapid Prototyping
    for Wireless Virtual Network Embedding Using MARVELO.” In <i>2019 IEEE Wireless
    Communications and Networking Conference (WCNC) (IEEE WCNC 2019) (Demo)</i>. Marrakech,
    Morocco, 2019.
  ieee: H. Afifi <i>et al.</i>, “A Rapid Prototyping for Wireless Virtual Network
    Embedding using MARVELO,” in <i>2019 IEEE Wireless Communications and Networking
    Conference (WCNC) (IEEE WCNC 2019) (Demo)</i>, 2019.
  mla: Afifi, Haitham, et al. “A Rapid Prototyping for Wireless Virtual Network Embedding
    Using MARVELO.” <i>2019 IEEE Wireless Communications and Networking Conference
    (WCNC) (IEEE WCNC 2019) (Demo)</i>, 2019.
  short: 'H. Afifi, H. Karl, S. Eikenberg, A. Mueller, L. Gansel, A. Makejkin, K.
    Hannemann, R. Schellenberg, in: 2019 IEEE Wireless Communications and Networking
    Conference (WCNC) (IEEE WCNC 2019) (Demo), Marrakech, Morocco, 2019.'
date_created: 2019-07-24T07:28:45Z
date_updated: 2022-01-06T06:51:22Z
ddc:
- '006'
department:
- _id: '75'
file:
- access_level: open_access
  content_type: application/pdf
  creator: hafifi
  date_created: 2021-01-30T12:39:43Z
  date_updated: 2021-01-30T12:42:31Z
  file_id: '21113'
  file_name: demo.pdf
  file_size: 102976
  relation: main_file
file_date_updated: 2021-01-30T12:42:31Z
has_accepted_license: '1'
keyword:
- WSN
- virtualization
- VNE
language:
- iso: eng
oa: '1'
place: Marrakech, Morocco
project:
- _id: '27'
  name: 'Akustische Sensornetzwerke - Teilprojekt '
publication: 2019 IEEE Wireless Communications and Networking Conference (WCNC) (IEEE
  WCNC 2019) (Demo)
status: public
title: A Rapid Prototyping for Wireless Virtual Network Embedding using MARVELO
type: conference
user_id: '65718'
year: '2019'
...
---
_id: '13123'
abstract:
- lang: eng
  text: Given the recent development in embedded devices, wireless senor nodes are
    no longer limited to data collection but they can also do processing (e.g., smartphones).
    Accordingly, new types of applications take an advantage of the processing and
    flexibility provided by the wireless network. A common property between these
    applications is that the processing is not running on only one single node, but
    it is broken-down into smaller tasks that can run over multiple nodes, i.e., exploiting
    the in-network processing. We study a special variant of in-network processing,
    where the application is given by a graph; the processing tasks have predefined
    connections to be executed in a predefined sequence. The problem of embedding
    an application graph into a network is commonly known as Virtual Network Embedding
    (VNE). In this paper, we present a Genetic Algorithm (GA) solution to solve this
    wireless VNE problem, where we take into account the interference and multi-cast
    properties. We show that the GA has a good performance and fast execution compared
    to the optimization problem.
author:
- first_name: Haitham
  full_name: Afifi, Haitham
  id: '65718'
  last_name: Afifi
- first_name: Konrad
  full_name: Horbach, Konrad
  last_name: Horbach
- first_name: Holger
  full_name: Karl, Holger
  id: '126'
  last_name: Karl
citation:
  ama: 'Afifi H, Horbach K, Karl H. A Genetic Algorithm Framework for Solving Wireless
    Virtual Network Embedding. In: <i>2019 International Conference on Wireless and
    Mobile Computing, Networking and Communications (WiMob) (WiMob 2019)</i>. Barcelona,
    Spain; 2019.'
  apa: Afifi, H., Horbach, K., &#38; Karl, H. (2019). A Genetic Algorithm Framework
    for Solving Wireless Virtual Network Embedding. In <i>2019 International Conference
    on Wireless and Mobile Computing, Networking and Communications (WiMob) (WiMob
    2019)</i>. Barcelona, Spain.
  bibtex: '@inproceedings{Afifi_Horbach_Karl_2019, place={Barcelona, Spain}, title={A
    Genetic Algorithm Framework for Solving Wireless Virtual Network Embedding}, booktitle={2019
    International Conference on Wireless and Mobile Computing, Networking and Communications
    (WiMob) (WiMob 2019)}, author={Afifi, Haitham and Horbach, Konrad and Karl, Holger},
    year={2019} }'
  chicago: Afifi, Haitham, Konrad Horbach, and Holger Karl. “A Genetic Algorithm Framework
    for Solving Wireless Virtual Network Embedding.” In <i>2019 International Conference
    on Wireless and Mobile Computing, Networking and Communications (WiMob) (WiMob
    2019)</i>. Barcelona, Spain, 2019.
  ieee: H. Afifi, K. Horbach, and H. Karl, “A Genetic Algorithm Framework for Solving
    Wireless Virtual Network Embedding,” in <i>2019 International Conference on Wireless
    and Mobile Computing, Networking and Communications (WiMob) (WiMob 2019)</i>,
    2019.
  mla: Afifi, Haitham, et al. “A Genetic Algorithm Framework for Solving Wireless
    Virtual Network Embedding.” <i>2019 International Conference on Wireless and Mobile
    Computing, Networking and Communications (WiMob) (WiMob 2019)</i>, 2019.
  short: 'H. Afifi, K. Horbach, H. Karl, in: 2019 International Conference on Wireless
    and Mobile Computing, Networking and Communications (WiMob) (WiMob 2019), Barcelona,
    Spain, 2019.'
date_created: 2019-09-03T11:54:17Z
date_updated: 2022-01-06T06:51:28Z
department:
- _id: '75'
language:
- iso: eng
place: Barcelona, Spain
project:
- _id: '27'
  name: Akustische Sensornetzwerke - Teilprojekt "Verteilte akustische Signalverarbeitung
    über funkbasierte Sensornetzwerke
publication: 2019 International Conference on Wireless and Mobile Computing, Networking
  and Communications (WiMob) (WiMob 2019)
status: public
title: A Genetic Algorithm Framework for Solving Wireless Virtual Network Embedding
type: conference
user_id: '65718'
year: '2019'
...
---
_id: '2474'
author:
- first_name: Haitham
  full_name: Afifi, Haitham
  id: '65718'
  last_name: Afifi
- first_name: Sébastien
  full_name: Auroux, Sébastien
  id: '42575'
  last_name: Auroux
- first_name: Holger
  full_name: Karl, Holger
  id: '126'
  last_name: Karl
citation:
  ama: 'Afifi H, Auroux S, Karl H. MARVELO: Wireless Virtual Network Embedding for
    Overlay Graphs with Loops. In: Proc. of IEEE Wireless Communications and Networking
    Conference (WCNC); 2018.'
  apa: 'Afifi, H., Auroux, S., &#38; Karl, H. (2018). MARVELO: Wireless Virtual Network
    Embedding for Overlay Graphs with Loops. Proc. of IEEE Wireless Communications
    and Networking Conference (WCNC).'
  bibtex: '@inproceedings{Afifi_Auroux_Karl_2018, title={MARVELO: Wireless Virtual
    Network Embedding for Overlay Graphs with Loops}, publisher={Proc. of IEEE Wireless
    Communications and Networking Conference (WCNC)}, author={Afifi, Haitham and Auroux,
    Sébastien and Karl, Holger}, year={2018} }'
  chicago: 'Afifi, Haitham, Sébastien Auroux, and Holger Karl. “MARVELO: Wireless
    Virtual Network Embedding for Overlay Graphs with Loops.” Proc. of IEEE Wireless
    Communications and Networking Conference (WCNC), 2018.'
  ieee: 'H. Afifi, S. Auroux, and H. Karl, “MARVELO: Wireless Virtual Network Embedding
    for Overlay Graphs with Loops,” 2018.'
  mla: 'Afifi, Haitham, et al. <i>MARVELO: Wireless Virtual Network Embedding for
    Overlay Graphs with Loops</i>. Proc. of IEEE Wireless Communications and Networking
    Conference (WCNC), 2018.'
  short: 'H. Afifi, S. Auroux, H. Karl, in: Proc. of IEEE Wireless Communications
    and Networking Conference (WCNC), 2018.'
date_created: 2018-04-24T08:06:55Z
date_updated: 2022-01-06T06:56:33Z
ddc:
- '000'
department:
- _id: '75'
file:
- access_level: closed
  content_type: application/pdf
  creator: tabu
  date_created: 2018-04-24T08:07:24Z
  date_updated: 2018-04-24T08:07:24Z
  file_id: '2475'
  file_name: p2292-afifi.pdf
  file_size: 1428258
  relation: main_file
  success: 1
file_date_updated: 2018-04-24T08:07:24Z
has_accepted_license: '1'
language:
- iso: eng
project:
- _id: '27'
  name: 'Akustische Sensornetzwerke - Teilprojekt '
publisher: Proc. of IEEE Wireless Communications and Networking Conference (WCNC)
status: public
title: 'MARVELO: Wireless Virtual Network Embedding for Overlay Graphs with Loops'
type: conference
user_id: '65718'
year: '2018'
...
---
_id: '6859'
abstract:
- lang: eng
  text: "Signal processing in WASNs is based on a software framework for hosting the
    algorithms as well as on a set of wireless connected devices representing the
    hardware. Each of the nodes contributes memory, processing power, communication
    bandwidth and some sensor information for the tasks to be solved on the network.
    \r\nIn this paper we present our MARVELO framework for distributed signal processing.
    It is intended for transforming existing centralized implementations into distributed
    versions. To this end, the software only needs a block-oriented implementation,
    which MARVELO picks-up and distributes on the network. Additionally, our sensor
    node hardware and the audio interfaces responsible for multi-channel recordings
    are presented."
author:
- first_name: Haitham
  full_name: Afifi, Haitham
  id: '65718'
  last_name: Afifi
- first_name: Joerg
  full_name: Schmalenstroeer, Joerg
  id: '460'
  last_name: Schmalenstroeer
- first_name: Joerg
  full_name: Ullmann, Joerg
  id: '16256'
  last_name: Ullmann
- first_name: Reinhold
  full_name: Haeb-Umbach, Reinhold
  id: '242'
  last_name: Haeb-Umbach
- first_name: Holger
  full_name: Karl, Holger
  id: '126'
  last_name: Karl
citation:
  ama: 'Afifi H, Schmalenstroeer J, Ullmann J, Haeb-Umbach R, Karl H. MARVELO - A
    Framework for Signal Processing in Wireless Acoustic Sensor Networks. In: <i>Speech
    Communication; 13th ITG-Symposium</i>. ; 2018:1-5.'
  apa: Afifi, H., Schmalenstroeer, J., Ullmann, J., Haeb-Umbach, R., &#38; Karl, H.
    (2018). MARVELO - A Framework for Signal Processing in Wireless Acoustic Sensor
    Networks. <i>Speech Communication; 13th ITG-Symposium</i>, 1–5.
  bibtex: '@inproceedings{Afifi_Schmalenstroeer_Ullmann_Haeb-Umbach_Karl_2018, title={MARVELO
    - A Framework for Signal Processing in Wireless Acoustic Sensor Networks}, booktitle={Speech
    Communication; 13th ITG-Symposium}, author={Afifi, Haitham and Schmalenstroeer,
    Joerg and Ullmann, Joerg and Haeb-Umbach, Reinhold and Karl, Holger}, year={2018},
    pages={1–5} }'
  chicago: Afifi, Haitham, Joerg Schmalenstroeer, Joerg Ullmann, Reinhold Haeb-Umbach,
    and Holger Karl. “MARVELO - A Framework for Signal Processing in Wireless Acoustic
    Sensor Networks.” In <i>Speech Communication; 13th ITG-Symposium</i>, 1–5, 2018.
  ieee: H. Afifi, J. Schmalenstroeer, J. Ullmann, R. Haeb-Umbach, and H. Karl, “MARVELO
    - A Framework for Signal Processing in Wireless Acoustic Sensor Networks,” in
    <i>Speech Communication; 13th ITG-Symposium</i>, 2018, pp. 1–5.
  mla: Afifi, Haitham, et al. “MARVELO - A Framework for Signal Processing in Wireless
    Acoustic Sensor Networks.” <i>Speech Communication; 13th ITG-Symposium</i>, 2018,
    pp. 1–5.
  short: 'H. Afifi, J. Schmalenstroeer, J. Ullmann, R. Haeb-Umbach, H. Karl, in: Speech
    Communication; 13th ITG-Symposium, 2018, pp. 1–5.'
date_created: 2019-01-17T15:47:35Z
date_updated: 2023-10-26T08:15:32Z
department:
- _id: '75'
- _id: '54'
language:
- iso: eng
page: 1-5
project:
- _id: '27'
  name: 'Akustische Sensornetzwerke - Teilprojekt '
- _id: '27'
  name: Akustische Sensornetzwerke - Teilprojekt "Verteilte akustische Signalverarbeitung
    über funkbasierte Sensornetzwerke
publication: Speech Communication; 13th ITG-Symposium
quality_controlled: '1'
status: public
title: MARVELO - A Framework for Signal Processing in Wireless Acoustic Sensor Networks
type: conference
user_id: '460'
year: '2018'
...
