Techniques for applying reinforcement learning to routing and wavelength assignment problems in optical fiber communication networks
We propose a novel application of reinforcement learning (RL) with invalid action masking and a novel training methodology for routing and wavelength assignment (RWA) in fixed-grid optical networks and demonstrate the generalizability of the learned policy to a realistic traffic matrix unseen during...
Saved in:
Published in | Journal of optical communications and networking Vol. 14; no. 9; pp. 733 - 748 |
---|---|
Main Authors | , , , , , |
Format | Journal Article |
Language | English |
Published |
Piscataway
Optica Publishing Group
01.09.2022
The Institute of Electrical and Electronics Engineers, Inc. (IEEE) |
Subjects | |
Online Access | Get full text |
Cover
Loading…
Abstract | We propose a novel application of reinforcement learning (RL) with invalid action masking and a novel training methodology for routing and wavelength assignment (RWA) in fixed-grid optical networks and demonstrate the generalizability of the learned policy to a realistic traffic matrix unseen during training. Through the introduction of invalid action masking and a new training method, the applicability of RL to RWA in fixed-grid networks is extended from considering connection requests between nodes to servicing demands of a given bit rate, such that lightpaths can be used to service multiple demands subject to capacity constraints. We outline the additional challenges involved for this RWA problem, for which we found that standard RL had low performance compared to that of baseline heuristics, in comparison with the connection requests RWA problem considered in the literature. Thus, we propose invalid action masking and a novel training method to improve the efficacy of the RL agent. With invalid action masking, domain knowledge is embedded in the RL model to constrain the action space of the RL agent to lightpaths that can support the current request, reducing the size of the action space and thus increasing the efficacy of the agent. In the proposed training method, the RL model is trained on a simplified version of the problem and evaluated on the target RWA problem, increasing the efficacy of the agent compared with training directly on the target problem. RL with invalid action masking and this training method outperforms standard RL and three state-of-the-art heuristics, namely, k shortest path first fit, first-fit k shortest path, and k shortest path most utilized, consistently across uniform and nonuniform traffic in terms of the number of accepted transmission requests for two real-world core topologies, NSFNET and COST–239. The RWA runtime of the proposed RL model is comparable to that of these heuristic approaches, demonstrating the potential for real-world applicability. Moreover, we show that the RL agent trained on uniform traffic is able to generalize well to a realistic nonuniform traffic distribution not seen during training, thus outperforming the heuristics for this traffic. Visualization of the learned RWA policy reveals an RWA strategy that differs significantly from those of the heuristic baselines in terms of the distribution of services across channels and the distribution across links. |
---|---|
AbstractList | We propose a novel application of reinforcement learning (RL) with invalid action masking and a novel training methodology for routing and wavelength assignment (RWA) in fixed-grid optical networks and demonstrate the generalizability of the learned policy to a realistic traffic matrix unseen during training. Through the introduction of invalid action masking and a new training method, the applicability of RL to RWA in fixed-grid networks is extended from considering connection requests between nodes to servicing demands of a given bit rate, such that lightpaths can be used to service multiple demands subject to capacity constraints. We outline the additional challenges involved for this RWA problem, for which we found that standard RL had low performance compared to that of baseline heuristics, in comparison with the connection requests RWA problem considered in the literature. Thus, we propose invalid action masking and a novel training method to improve the efficacy of the RL agent. With invalid action masking, domain knowledge is embedded in the RL model to constrain the action space of the RL agent to lightpaths that can support the current request, reducing the size of the action space and thus increasing the efficacy of the agent. In the proposed training method, the RL model is trained on a simplified version of the problem and evaluated on the target RWA problem, increasing the efficacy of the agent compared with training directly on the target problem. RL with invalid action masking and this training method outperforms standard RL and three state-of-the-art heuristics, namely, k shortest path first fit, first-fit k shortest path, and k shortest path most utilized, consistently across uniform and nonuniform traffic in terms of the number of accepted transmission requests for two real-world core topologies, NSFNET and COST–239. The RWA runtime of the proposed RL model is comparable to that of these heuristic approaches, demonstrating the potential for real-world applicability. Moreover, we show that the RL agent trained on uniform traffic is able to generalize well to a realistic nonuniform traffic distribution not seen during training, thus outperforming the heuristics for this traffic. Visualization of the learned RWA policy reveals an RWA strategy that differs significantly from those of the heuristic baselines in terms of the distribution of services across channels and the distribution across links. We propose a novel application of reinforcement learning (RL) with invalid action masking and a novel training methodology for routing and wavelength assignment (RWA) in fixed-grid optical networks and demonstrate the generalizability of the learned policy to a realistic traffic matrix unseen during training. Through the introduction of invalid action masking and a new training method, the applicability of RL to RWA in fixed-grid networks is extended from considering connection requests between nodes to servicing demands of a given bit rate, such that lightpaths can be used to service multiple demands subject to capacity constraints. We outline the additional challenges involved for this RWA problem, for which we found that standard RL had low performance compared to that of baseline heuristics, in comparison with the connection requests RWA problem considered in the literature. Thus, we propose invalid action masking and a novel training method to improve the efficacy of the RL agent. With invalid action masking, domain knowledge is embedded in the RL model to constrain the action space of the RL agent to lightpaths that can support the current request, reducing the size of the action space and thus increasing the efficacy of the agent. In the proposed training method, the RL model is trained on a simplified version of the problem and evaluated on the target RWA problem, increasing the efficacy of the agent compared with training directly on the target problem. RL with invalid action masking and this training method outperforms standard RL and three state-of-the-art heuristics, namely, k shortest path first fit, first-fit k shortest path, and k shortest path most utilized, consistently across uniform and nonuniform traffic in terms of the number of accepted transmission requests for two real-world core topologies, NSFNET and COST–239. The RWA runtime of the proposed RL model is comparable to that of these heuristic approaches, demonstrating the potential for real-world applicability. Moreover, we show that the RL agent trained on uniform traffic is able to generalize well to a realistic nonuniform traffic distribution not seen during training, thus outperforming the heuristics for this traffic. Visualization of the learned RWA policy reveals an RWA strategy that differs significantly from those of the heuristic baselines in terms of the distribution of services across channels and the distribution across links. |
Author | Zervas, Georgios Nallaperuma, Sam Shabka, Zacharaya Nevin, Josh W. Shevchenko, Nikita A. Savory, Seb J. |
Author_xml | – sequence: 1 givenname: Josh W. orcidid: 0000-0002-6067-6892 surname: Nevin fullname: Nevin, Josh W. organization: Fibre Optic Communication Systems Laboratory (FOCSLab), Electrical Engineering Division, Department of Engineering, University of Cambridge, 9 JJ Thomson Avenue, Cambridge CB3 0FA, UK – sequence: 2 givenname: Sam surname: Nallaperuma fullname: Nallaperuma, Sam organization: Fibre Optic Communication Systems Laboratory (FOCSLab), Electrical Engineering Division, Department of Engineering, University of Cambridge, 9 JJ Thomson Avenue, Cambridge CB3 0FA, UK – sequence: 3 givenname: Nikita A. orcidid: 0000-0001-7094-1322 surname: Shevchenko fullname: Shevchenko, Nikita A. organization: Fibre Optic Communication Systems Laboratory (FOCSLab), Electrical Engineering Division, Department of Engineering, University of Cambridge, 9 JJ Thomson Avenue, Cambridge CB3 0FA, UK – sequence: 4 givenname: Zacharaya surname: Shabka fullname: Shabka, Zacharaya organization: Optical Networks Group, Department of Electronic & Electrical Engineering, University College London (UCL), Torrington Place, London WC1E 7JE, UK – sequence: 5 givenname: Georgios surname: Zervas fullname: Zervas, Georgios organization: Optical Networks Group, Department of Electronic & Electrical Engineering, University College London (UCL), Torrington Place, London WC1E 7JE, UK – sequence: 6 givenname: Seb J. orcidid: 0000-0002-6803-718X surname: Savory fullname: Savory, Seb J. organization: Fibre Optic Communication Systems Laboratory (FOCSLab), Electrical Engineering Division, Department of Engineering, University of Cambridge, 9 JJ Thomson Avenue, Cambridge CB3 0FA, UK |
BookMark | eNp1kDtPwzAUhS1UJNrCxMhiiRG12LHjxCOqeArRpcyR6960LokdbJeqOz-cpEUdkJju1dF37uMMUM86CwhdUjKmTPDbl-nkbcwFEYk8QX0qORsRwWTv2CfkDA1CWBMiMkrTPvqegV5Z87mBgEvnsWqaamfsEnswthU01GAjrkB528nRYe82sWuVXeCt-oIK7DKusArBLO2ebrybV1AHbCx2TTRaVbg0c_BYu7re2FaIxllsIW6d_wjn6LRUVYCL3zpE7w_3s8nT6HX6-Dy5ex1pRvM44kpKnsx1zvhcJWW-SDiRecIzRXQGqeK5FrpMtWgBTVOpGJNMaanFIlswodkQXR_mtgd2H8di7TbetiuLJCNpnrYm1lL0QGnvQvBQFtrE_cHRK1MVlBRd2EUXdnEIu_Xc_PE03tTK7_6hrw60AYAjKXPBcinYD2CQjj8 |
CODEN | JOCNBB |
CitedBy_id | crossref_primary_10_1016_j_engappai_2024_109341 crossref_primary_10_1038_s41467_024_50307_y crossref_primary_10_1364_JOCN_534477 crossref_primary_10_1364_JOCN_532850 crossref_primary_10_1364_JOCN_499210 crossref_primary_10_1051_epjconf_202328701007 crossref_primary_10_1016_j_asoc_2023_110436 crossref_primary_10_1109_JLT_2024_3519778 crossref_primary_10_1364_JOCN_483733 crossref_primary_10_1364_JOCN_503599 |
Cites_doi | 10.1109/COMST.2019.2916583 10.1364/OE.27.007896 10.1109/ICTON.2019.8840405 10.1364/OFC.2018.W3A.4 10.1145/3424978.3425004 10.1109/TCYB.2020.2977661 10.1109/26.153361 10.1109/JRPROC.1961.287775 10.1109/JLT.2019.2923615 10.1007/s11107-015-0488-0 10.1038/s41586-021-04301-9 10.1016/j.osn.2007.05.002 10.1109/JSTQE.2022.3151323 10.1109/JLT.2021.3106714 10.1109/JLT.2019.2910143 10.1109/JSAC.2020.3000405 10.23919/ONDM51796.2021.9492334 10.1364/OE.447591 10.1109/JLT.2019.2942710 10.1109/JLT.2012.2217729 10.1080/03610918.2014.931971 |
ContentType | Journal Article |
Copyright | Copyright The Institute of Electrical and Electronics Engineers, Inc. (IEEE) 2022 |
Copyright_xml | – notice: Copyright The Institute of Electrical and Electronics Engineers, Inc. (IEEE) 2022 |
DBID | 97E RIA RIE AAYXX CITATION 7SC 7SP 8FD JQ2 L7M L~C L~D |
DOI | 10.1364/JOCN.460629 |
DatabaseName | IEEE All-Society Periodicals Package (ASPP) 2005–Present IEEE All-Society Periodicals Package (ASPP) 1998–Present IEEE/IET Electronic Library CrossRef Computer and Information Systems Abstracts Electronics & Communications Abstracts Technology Research Database ProQuest Computer Science Collection Advanced Technologies Database with Aerospace Computer and Information Systems Abstracts Academic Computer and Information Systems Abstracts Professional |
DatabaseTitle | CrossRef Technology Research Database Computer and Information Systems Abstracts – Academic Electronics & Communications Abstracts ProQuest Computer Science Collection Computer and Information Systems Abstracts Advanced Technologies Database with Aerospace Computer and Information Systems Abstracts Professional |
DatabaseTitleList | Technology Research Database CrossRef |
Database_xml | – sequence: 1 dbid: RIE name: IEEE Electronic Library (IEL) url: https://proxy.k.utb.cz/login?url=https://ieeexplore.ieee.org/ sourceTypes: Publisher |
DeliveryMethod | fulltext_linktorsrc |
Discipline | Engineering |
EISSN | 1943-0639 |
EndPage | 748 |
ExternalDocumentID | 10_1364_JOCN_460629 9863896 |
Genre | orig-research |
GroupedDBID | 0R~ 29L 29N 4.4 5VS 6IK 8SL 97E AAJGR AARMG AASAJ AAWJZ AAWTH ABAZT ABQJQ ABVLG ACIWK AEDJG AENEX AETIX AGQYO AGSQL AHBIQ AKGWG AKJIK AKQYR ALMA_UNASSIGNED_HOLDINGS ATHME ATWAV AYPRP AZSQR AZYMN BEFXN BFFAM BGNUA BKEBE BPEOZ DSZJF DU5 EBS EJD HZ~ IES IFIPE IPLJI JAVBF M43 O9- OCL ODPQJ OFLFD OPJBK RIA RIE RNS ROL ROS TR6 AAYXX CITATION 7SC 7SP 8FD JQ2 L7M L~C L~D |
ID | FETCH-LOGICAL-c318t-4a9942bc834ba2f8d24098247a0c7e5a48c6cf5c6834c159a3393ac9c6d7d36c3 |
IEDL.DBID | RIE |
ISSN | 1943-0620 |
IngestDate | Sun Jun 29 15:52:38 EDT 2025 Tue Jul 01 01:09:31 EDT 2025 Thu Apr 24 22:56:22 EDT 2025 Wed Aug 27 02:07:44 EDT 2025 |
IsDoiOpenAccess | false |
IsOpenAccess | true |
IsPeerReviewed | true |
IsScholarly | true |
Issue | 9 |
Language | English |
LinkModel | DirectLink |
MergedId | FETCHMERGED-LOGICAL-c318t-4a9942bc834ba2f8d24098247a0c7e5a48c6cf5c6834c159a3393ac9c6d7d36c3 |
Notes | ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 14 |
ORCID | 0000-0002-6803-718X 0000-0001-7094-1322 0000-0002-6067-6892 |
OpenAccessLink | https://www.repository.cam.ac.uk/handle/1810/339965 |
PQID | 2705851593 |
PQPubID | 85498 |
PageCount | 16 |
ParticipantIDs | ieee_primary_9863896 crossref_citationtrail_10_1364_JOCN_460629 proquest_journals_2705851593 crossref_primary_10_1364_JOCN_460629 |
ProviderPackageCode | CITATION AAYXX |
PublicationCentury | 2000 |
PublicationDate | 2022-09-01 |
PublicationDateYYYYMMDD | 2022-09-01 |
PublicationDate_xml | – month: 09 year: 2022 text: 2022-09-01 day: 01 |
PublicationDecade | 2020 |
PublicationPlace | Piscataway |
PublicationPlace_xml | – name: Piscataway |
PublicationTitle | Journal of optical communications and networking |
PublicationTitleAbbrev | jocn |
PublicationYear | 2022 |
Publisher | Optica Publishing Group The Institute of Electrical and Electronics Engineers, Inc. (IEEE) |
Publisher_xml | – name: Optica Publishing Group – name: The Institute of Electrical and Electronics Engineers, Inc. (IEEE) |
References | Minsky (jocn-14-9-733-R15) 1961; 49 Rusek (jocn-14-9-733-R20) 2020; 38 Poggiolini (jocn-14-9-733-R26) 2012; 30 Häger (jocn-14-9-733-R25) 2018 Zang (jocn-14-9-733-R18) 2000; 1 Shiraki (jocn-14-9-733-R6) 2019 Suárez-Varela (jocn-14-9-733-R8) 2019 Chen (jocn-14-9-733-R10) 2019; 37 Cicco (jocn-14-9-733-R7) 2022; 28 Zhuge (jocn-14-9-733-R22) 2019; 37 Xiao (jocn-14-9-733-R11) 2019; 27 Bello (jocn-14-9-733-R4) 2017 Chen (jocn-14-9-733-R13) 2022 Mnih (jocn-14-9-733-R2) 2013 Xu (jocn-14-9-733-R9) 2020 El Sheikh (jocn-14-9-733-R12) 2021 Natalino (jocn-14-9-733-R14) 2020 Avci (jocn-14-9-733-R31) 2013 Sutton (jocn-14-9-733-R16) 2018 Shevchenko (jocn-14-9-733-R27) 2022; 30 Pereira (jocn-14-9-733-R34) 2015; 44 Vincent (jocn-14-9-733-R19) 2019; 37 Nevin (jocn-14-9-733-R24) 2021; 39 Degrave (jocn-14-9-733-R3) 2022; 602 Jiang (jocn-14-9-733-R23) 2021 Raffin (jocn-14-9-733-R32) 2021; 22 Jaumard (jocn-14-9-733-R17) 2007; 4 Chlamtac (jocn-14-9-733-R1) 1992; 40 Li (jocn-14-9-733-R5) 2020; 51 Ives (jocn-14-9-733-R33) 2015; 29 Luong (jocn-14-9-733-R21) 2019; 21 |
References_xml | – volume: 21 start-page: 3133 year: 2019 ident: jocn-14-9-733-R21 publication-title: IEEE Commun. Surveys Tutorials doi: 10.1109/COMST.2019.2916583 – volume: 27 start-page: 7896 year: 2019 ident: jocn-14-9-733-R11 publication-title: Opt. Express doi: 10.1364/OE.27.007896 – volume-title: Proceedings of the International Conference on Transparent Optical Networks (ICTON) year: 2019 ident: jocn-14-9-733-R6 article-title: Dynamic control of transparent optical networks with adaptive state-value assessment enabled by reinforcement learning doi: 10.1109/ICTON.2019.8840405 – start-page: W3 volume-title: Optical Fiber Communication Conference (OFC) year: 2018 ident: jocn-14-9-733-R25 article-title: Nonlinear interference mitigation via deep neural networks doi: 10.1364/OFC.2018.W3A.4 – volume-title: International Conference on Computer Science and Application Engineering (CSAE) year: 2020 ident: jocn-14-9-733-R9 article-title: A deep-reinforcement learning approach for SDN routing optimization doi: 10.1145/3424978.3425004 – volume: 51 start-page: 3103 year: 2020 ident: jocn-14-9-733-R5 publication-title: IEEE Trans. Cybern. doi: 10.1109/TCYB.2020.2977661 – start-page: M3 volume-title: Optical Fiber Communication Conference (OFC) year: 2022 ident: jocn-14-9-733-R13 article-title: ADMIRE: demonstration of collaborative data-driven and model-driven intelligent routing engine for IP/optical cross-layer optimization in X-haul networks – volume: 40 start-page: 1171 year: 1992 ident: jocn-14-9-733-R1 publication-title: IEEE Trans. Commun. doi: 10.1109/26.153361 – volume: 49 start-page: 8 year: 1961 ident: jocn-14-9-733-R15 publication-title: Proc. IRE doi: 10.1109/JRPROC.1961.287775 – volume: 37 start-page: 4155 year: 2019 ident: jocn-14-9-733-R10 publication-title: J. Lightwave Technol. doi: 10.1109/JLT.2019.2923615 – volume-title: Reinforcement Learning: An Introduction year: 2018 ident: jocn-14-9-733-R16 – volume: 29 start-page: 244 year: 2015 ident: jocn-14-9-733-R33 publication-title: Photo. Netw. Commun. doi: 10.1007/s11107-015-0488-0 – start-page: Mo.C1.1 volume-title: International Conference on Transparent Optical Networks (ICTON) year: 2020 ident: jocn-14-9-733-R14 article-title: The optical RL-gym: an open-source toolkit for applying reinforcement learning in optical networks – volume: 602 start-page: 414 year: 2022 ident: jocn-14-9-733-R3 publication-title: Nature doi: 10.1038/s41586-021-04301-9 – volume: 4 start-page: 157 year: 2007 ident: jocn-14-9-733-R17 publication-title: Opt. Switching Netw. doi: 10.1016/j.osn.2007.05.002 – volume: 28 start-page: 3600112 year: 2022 ident: jocn-14-9-733-R7 publication-title: IEEE J. Sel. Top. Quantum Electron. doi: 10.1109/JSTQE.2022.3151323 – volume: 39 start-page: 6833 year: 2021 ident: jocn-14-9-733-R24 publication-title: J. Lightwave Technol. doi: 10.1109/JLT.2021.3106714 – volume: 37 start-page: 3055 year: 2019 ident: jocn-14-9-733-R22 publication-title: J. Lightwave Technol. doi: 10.1109/JLT.2019.2910143 – start-page: M2 volume-title: Optical Fiber Communication Conference (OFC) year: 2019 ident: jocn-14-9-733-R8 article-title: Routing based on deep reinforcement learning in optical transport networks – start-page: M3 volume-title: Optical Fiber Communication Conference (OFC) year: 2021 ident: jocn-14-9-733-R23 article-title: Solving the nonlinear Schrödinger equation in optical fibers using physics-informed neural network – volume: 22 start-page: 1 year: 2021 ident: jocn-14-9-733-R32 publication-title: J. Mach. Learn. Res. – volume: 38 start-page: 2260 year: 2020 ident: jocn-14-9-733-R20 publication-title: IEEE J. Sel. Areas Commun. doi: 10.1109/JSAC.2020.3000405 – start-page: 1519 volume-title: IEEE Global Communications Conference (GLOBECOM) year: 2013 ident: jocn-14-9-733-R31 article-title: Network coding-based link failure recovery over large arbitrary networks – volume: 1 start-page: 47 year: 2000 ident: jocn-14-9-733-R18 publication-title: Opt. Netw. Mag. – volume-title: Conference on Optical Network Design and Modeling (ONDM) year: 2021 ident: jocn-14-9-733-R12 article-title: Multi-band provisioning in dynamic elastic optical networks: a comparative study of a heuristic and a deep reinforcement learning approach doi: 10.23919/ONDM51796.2021.9492334 – volume: 30 start-page: 19320 year: 2022 ident: jocn-14-9-733-R27 publication-title: Opt. Express doi: 10.1364/OE.447591 – volume: 37 start-page: 5380 year: 2019 ident: jocn-14-9-733-R19 publication-title: J. Lightwave Technol. doi: 10.1109/JLT.2019.2942710 – volume-title: International Conference on Learning Representations (ICLR) year: 2017 ident: jocn-14-9-733-R4 article-title: Neural combinatorial optimization with reinforcement learning – volume: 30 start-page: 3857 year: 2012 ident: jocn-14-9-733-R26 publication-title: J. Lightwave Technol. doi: 10.1109/JLT.2012.2217729 – volume: 44 start-page: 2636 year: 2015 ident: jocn-14-9-733-R34 publication-title: Commun. Stat. Simul. Comput. doi: 10.1080/03610918.2014.931971 – volume-title: NIPS Deep Learning Workshop year: 2013 ident: jocn-14-9-733-R2 article-title: Playing Atari with deep reinforcement learning |
SSID | ssj0067115 |
Score | 2.4217415 |
Snippet | We propose a novel application of reinforcement learning (RL) with invalid action masking and a novel training methodology for routing and wavelength... |
SourceID | proquest crossref ieee |
SourceType | Aggregation Database Enrichment Source Index Database Publisher |
StartPage | 733 |
SubjectTerms | Communication networks Effectiveness Heuristic Heuristic methods Learning Masking Mathematical models Nonuniform traffic Optical communication Optical fiber networks Optical fibers Reinforcement learning Routing Topology Training Wavelength assignment |
Title | Techniques for applying reinforcement learning to routing and wavelength assignment problems in optical fiber communication networks |
URI | https://ieeexplore.ieee.org/document/9863896 https://www.proquest.com/docview/2705851593 |
Volume | 14 |
hasFullText | 1 |
inHoldings | 1 |
isFullTextHit | |
isPrint | |
link | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV1NT9wwELWAU3soFFp1-ajmwKlqll1_-4gQCCEBF5C4Rc7E2aJWCdrNqlLP_HA8TrKgwoFbDhPJ0tie55k38xg7DNxL7R1m01IVGU0Ao0STy2KoC2qK06CR-p0vr_T5rby4U3dr7OeqFyaEkMhnYUyfqZZfNrikVNmRsxRf9Tpbjw-3rldruHW1mSa1gvgmJ7UCPul78YSWRxfXJ1djGZF6wpHP0SfJqby6g1NgOdtkl8OSOj7J7_GyLcb4779pje9d8xb71CNMOO62xGe2Fupt9vHF3MEd9ngzTG5dQAStQFVsaneCeUiDVDHlDKFXlJhB28C8WRJBGnxdwl9PahX1rP0FEXrfzxKhAHppmgXc19A8pBQ5VMRHAXzZhAJ1RzxffGG3Z6c3J-dZL8eQYTz4bSa9c5IXaIUsPK9sGcGAs1waP0ETlJcWNVYKdTTAiJK8EE54dKhLUwqN4ivbqJs6fGMguFFOmYqXykhtuXfWWD3xAqX1XlUj9mNwU479rHKSzPiTpwKcljn5NO98OmKHK-OHbkTH22Y75J2VSe-YEdsf_J_3x3eRczOhcqlyYvftv_bYB059EIlsts822vkyHER00hbf07Z8AoWW5W0 |
linkProvider | IEEE |
linkToHtml | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwjV1NT9wwEB1ReqA9QAtFXUqLD5xQs2z87WOFirbAbi-LxC1yJs4WFSVoN6tKPfeH13aSBVEOveUwkSyN7Xmej_cAjh21XFqDSVqIPAkMYCHRZBIf6pxIMXUSw7zzZCrH1_ziRtxswOf1LIxzLjafuWH4jLX8osZVSJWdGh3iq3wBL33cF2k7rdXfu1KlUa_Av8qDXgEdddN4TPLTi-9n0yH3WD0iyYf4EwVV_rmFY2g534FJv6i2o-TncNXkQ_z9hK_xf1f9BrY7jEm-tJviLWy4ahdeP2Ie3IM_s567dUk8bCWhjh0GnsjCRSpVjFlD0mlKzElTk0W9Ci3SxFYF-WWDXkU1b34QD75v57GlgHTiNEtyW5H6PibJSRk6Ugg-HkMhVdt6vnwH1-dfZ2fjpBNkSNAf_Sbh1hhOc9SM55aWuvBwwGjKlR2hcsJyjRJLgdIboMdJljHDLBqUhSqYRLYPm1VdufdAGFXCCFXSQiguNbVGKy1HliHX1opyACe9mzLs2MqDaMZdFktwkmfBp1nr0wEcr43vW5KO5832gnfWJp1jBnDY-z_rDvAyo2oUCqbCsIPn_zqCrfFscpVdfZtefoBXNExFxNazQ9hsFiv30WOVJv8Ut-hfnn3otg |
openUrl | ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=Techniques+for+applying+reinforcement+learning+to+routing+and+wavelength+assignment+problems+in+optical+fiber+communication+networks&rft.jtitle=Journal+of+optical+communications+and+networking&rft.au=Nevin%2C+Josh+W.&rft.au=Nallaperuma%2C+Sam&rft.au=Shevchenko%2C+Nikita+A.&rft.au=Shabka%2C+Zacharaya&rft.date=2022-09-01&rft.issn=1943-0620&rft.eissn=1943-0639&rft.volume=14&rft.issue=9&rft.spage=733&rft_id=info:doi/10.1364%2FJOCN.460629&rft.externalDBID=n%2Fa&rft.externalDocID=10_1364_JOCN_460629 |
thumbnail_l | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=1943-0620&client=summon |
thumbnail_m | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=1943-0620&client=summon |
thumbnail_s | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=1943-0620&client=summon |