Assessment and Quantify the Impact of Different Data Flow Control Methods on Digital Substation Communication Network

2020 
Due to the randomness of fault events or abnormal data injections (such as storming/avalanche data), the time critical data message (such as GOOSE) can be affected, especially when the data network reaches its data exchange nearly full capacity. To address the impact studies of a large number of GOOSE events (due to faults or emergency operation switches) on time critical message exchanges, the main knowledge contributions in this regard are (i) formulating a Poisson queuing equation to represent GOOSE messages as random message arrivals based on IEC61850 standard, and (ii) modelling of Poisson queuing process as random data arrivals into data buffers for three widely accepted data flow control methods, (iii) formulating a generic data flow control analysis methodology for the study of the impact of different data flow control methods on the P&C time critical messages. Three data flow control models based on the Poisson queuing model are implemented using OPNET. The results are compared and analysed. The discussion has been made to confirm that suitable data flow control method can ensure the network data flow performance of the time critical messages for protection and control functions.
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