TY - GEN
T1 - Cyber-Physical Risk Driven Routing Planning with Deep Reinforcement-Learning in Smart Grid Communication Networks
AU - Jin, Zhuojun
AU - Yu, Peng
AU - Guo, Shao Yong
AU - Feng, Lei
AU - Zhou, Fanqin
AU - Tao, Minxing
AU - Li, Wenjing
AU - Qiu, Xue Song
AU - Shi, Lei
N1 - Publisher Copyright:
© 2020 IEEE.
PY - 2020/6
Y1 - 2020/6
N2 - In modern grid systems which is a typical cyber-physical System (CPS), information space and physical space are closely related. Once the communication link is interrupted, it will make a great damage to the power system. If the service path is too concentrated, the risk will be greatly increased. In order to solve this problem, this paper constructs a route planning algorithm that combines node load pressure, link load balance and service delay risk. At present, the existing intelligent algorithms are easy to fall into the local optimal value, so we chooses the deep reinforcement learning algorithm (DRL). Firstly, we build a risk assessment model. The node risk assessment index is established by using the node load pressure, and then the link risk assessment index is established by using the average service communication delay and link balance degree. The route planning problem is then solved by a route planning algorithm based on DRL. Finally, experiments are carried out in a simulation scenario of a power grid system. The results show that our method can find a lower risk path than the original Dijkstra algorithm and the Constraint-Dijkstra algorithm.
AB - In modern grid systems which is a typical cyber-physical System (CPS), information space and physical space are closely related. Once the communication link is interrupted, it will make a great damage to the power system. If the service path is too concentrated, the risk will be greatly increased. In order to solve this problem, this paper constructs a route planning algorithm that combines node load pressure, link load balance and service delay risk. At present, the existing intelligent algorithms are easy to fall into the local optimal value, so we chooses the deep reinforcement learning algorithm (DRL). Firstly, we build a risk assessment model. The node risk assessment index is established by using the node load pressure, and then the link risk assessment index is established by using the average service communication delay and link balance degree. The route planning problem is then solved by a route planning algorithm based on DRL. Finally, experiments are carried out in a simulation scenario of a power grid system. The results show that our method can find a lower risk path than the original Dijkstra algorithm and the Constraint-Dijkstra algorithm.
KW - Cyber-physical System
KW - Deep Reinforcement Learning
KW - Risk Balance
KW - Routing Planning
UR - http://www.scopus.com/inward/record.url?scp=85089698203&partnerID=8YFLogxK
U2 - 10.1109/IWCMC48107.2020.9148342
DO - 10.1109/IWCMC48107.2020.9148342
M3 - Conference contribution
AN - SCOPUS:85089698203
T3 - 2020 International Wireless Communications and Mobile Computing, IWCMC 2020
SP - 1278
EP - 1283
BT - 2020 International Wireless Communications and Mobile Computing, IWCMC 2020
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 16th IEEE International Wireless Communications and Mobile Computing Conference, IWCMC 2020
Y2 - 15 June 2020 through 19 June 2020
ER -