Statistical Assessment of Open Optical Networks
Abstract
:1. Introduction
2. Network Abstraction in Open Optical Networks
2.1. From the Physical Layer to the Graph Representation
2.2. Routing Strategies
- For each traffic request, the shortest paths are explored;
- For each of the selected paths, all the waveplanes are scanned until a suitable working LP to accommodate the request. LP selection is done by considering the weights of the edges of the available optical paths;
- Whenever a demand is allocated, the edges of that waveplane corresponding to the LP are labelled as busy;
- If a request cannot be allocated, it is counted as rejected and the RWA moves to the next request.
3. SNAP: Statistical Network Assessment Process
- Description of the Network Topology and Physical Layer: a set of network nodes and their relative connectivity matrix describe the network topology. Beyond this logical description, the set of physical parameters describing the hardware composing the network must be provided. For example, a network node could be physically characterized simply as the ROADM loss and the noise figure (NF) of the amplifier recovering its loss or even by a more complex model characterizing its filtering effect. As for the optical fiber links connecting the nodes, we take into account the fiber type (with its physical parameters such as length, attenuation coefficient, dispersion and effective area) and the inline amplifiers NF. This data is then used to estimate the QoT metric of each LP, such as the SNR degradation, via the model of choice [16]. However, note that it is also possible to provide directly the graph and the weights of its edges.
- Spectral Information and Network Management Strategies: This set of parameters describes how the network hardware should be operated. This includes:
- Spectral Information: the description of the transceivers generating and receiving the data signals to inject into the network. This involves the used spectral region (C-Band, L-Band, Multiband, etc.), fixed or flexible-grid spectral allocation, grid size, fixed or multi-rate transmission, symbol rate, FEC overhead and pre-FEC target BER;
- Power Control Plan: this defines the power management strategy used for transmission along the optical paths, such as the LOGO strategy for SNR optimization;
- Routing and Spectrum/Wavelength Assignment (RSWA) algorithm: This describes how the optical paths between a nodes pairs are evaluated and ranked and spectral slots assigned to LPs, i.e., the routing policy. For example, a shortest link or lowest latency routing could be adopted as well as best-QoT routing.
- Traffic Model Description: The traffic loading the network is given as a set of LP allocation requests between two network nodes. In addition, pre-existing legacy traffic loading the network is supported. A certain number of Monte Carlo realizations to run over must be set due to the stochastic nature of the traffic requests in order to provide reliable network statistics. This tuning will be shown once in Section 5.1 by looking at the convergence of the average bit-rate per LP, so that results are indeed probability density functions (PDFs) of targeted metrics. As described in the following, SNAP supports two models for traffic loading, identified as given traffic or progressive traffic analyses.
- Given Traffic Analysis: as described in the left-side pseudocode of Table 1, we define a traffic matrix D, whose elements may represent either a connection request or a data-rate request between nodes l and m. In the former case, represents the number of LPs to be established between nodes l and m. In the latter, it is a transport request between nodes l and m of groomed traffic of size that the physical layer should be fulfilled according to the transceiver technology (fixed- or multi-rate) and spectral allocation strategy (fix- or flex-grid). For example, a D matrix such that ∀ and for represents an any-to-any connectivity case, i.e., each node can request a LP to each of the other nodes except to itself. At each Monte Carlo iteration, the randomness of the LP requests lies in the order in which the elements are picked up. For each the algorithm tries to allocate a LP, i.e., a suitable wavelength and optical path according to the RSWA strategy. If the LP allocation is successful, the corresponding bit-rate is collected, n being the index of the n-th allocated LP at the i-th Monte Carlo iteration. Otherwise, the missed allocation counter is incremented. After all the ’s are processed by the RSWA algorithm, the network loading loop terminates, so that the network reaching the saturation state is not assured. Hence, this analysis is aimed at deriving static metrics by looking at the network status after each loading loop. The loading loop is repeated for each Monte Carlo iteration and static metrics are finally calculated from the obtained PDFs.
- Progressive Traffic Analysis: with respect to the right-side pseudocode of Table 1, in this case, LP alllocation requests are issued indefinitely with the progressive loading loop on i-th Monte-Carlo iteration. Traffic requests are generated according to a probability mass function in the space of the source/destination nodes, expressing the probability that a connection request between nodes might occur. In SNAP, we assume that this probability distribution is uniform among the nodes at each iteration i, so that the connection request probability is equal to and constant for each nodes pair, being the number of network nodes generating and receiving traffic. As for the given traffic case, LP allocation requests can be either connection requests or data-rate requests. In turn, the grooming size can be fixed and defined at the logical level or generated from a certain probability distribution. Similarly to the given traffic case, if an LP can be allocated for the issued request, the corresponding bit-rate is calculated; otherwise, the missed allocation counter is incremented. Here, however, the network loading loop terminates at network saturation, i.e., when subsequent requests for connections are blocked. Hence, progressive traffic analysis is suitable for both static and dynamic metrics estimation, since statistics at a certain network load level or at network saturation can be obtained. The loading loop is repeated times and, in the end, performance metrics are obtained from the obtained PDFs.
- Average bit-rate per LP of Equation (4);
- Spectral saturation: the spectral occupation of each node-to-node fiber connection;
- Blocking information: the number of blocked demands for each node or link;
- Acceptance information: the number of demands accepted in each node.
- Blocking Probability: the probability of demand being blocked after demand j. can be considered the Quality-of-Service (QoS) figure of merit of the network under progressive loading;
- Total allocated network traffic: obtained as the sum of the number of allocated LP requests up to the j-th demand. Selecting a target QoS, one can evaluate the average maximum traffic supported by the network at that target QoS;
- Link saturation: the number of the allocated LPs in the overall available bandwidth in each network link.
4. Given Traffic Results
5. Progressive Traffic Results
5.1. Preliminary Results on SNAP Algorithm Convergence
5.2. Network NLI Penalty Assessment with Pure/Hybrid Modulation Formats
5.3. QoT-E Layer Analysis
5.4. Network Impact of Fixed and Hybrid Rate Transceivers
5.5. Fixed vs. Flexible Frequency Grid Comparison
5.6. Networking with Different SDM Solutions
- UFR with CCC,
- UFR with InS,
- SCMCF with JoS and NLM,
- SCMCF with JoS and without NLM.
6. Conclusions
Funding
Acknowledgments
Conflicts of Interest
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Fiber Type | Loss [dB/km] | Dispersion D [ps/(nm · km)] | Effective Area [m] |
---|---|---|---|
NZDSF | 0.220 | 3.8 | 70 |
SMF | 0.200 | 16.7 | 80 |
PSCF | 0.167 | 21.0 | 135 |
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Virgillito, E.; Ferrari, A.; D’Amico, A.; Curri, V. Statistical Assessment of Open Optical Networks. Photonics 2019, 6, 64. https://doi.org/10.3390/photonics6020064
Virgillito E, Ferrari A, D’Amico A, Curri V. Statistical Assessment of Open Optical Networks. Photonics. 2019; 6(2):64. https://doi.org/10.3390/photonics6020064
Chicago/Turabian StyleVirgillito, Emanuele, Alessio Ferrari, Andrea D’Amico, and Vittorio Curri. 2019. "Statistical Assessment of Open Optical Networks" Photonics 6, no. 2: 64. https://doi.org/10.3390/photonics6020064
APA StyleVirgillito, E., Ferrari, A., D’Amico, A., & Curri, V. (2019). Statistical Assessment of Open Optical Networks. Photonics, 6(2), 64. https://doi.org/10.3390/photonics6020064