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Optimal Defense Strategy Selection Algorithm Based on Reinforcement Learning and Opposition-Based Learning
2022
Applied Sciences
Industrial control systems (ICS) are facing increasing cybersecurity issues, leading to enormous threats and risks to numerous industrial infrastructures. In order to resist such threats and risks, it is particularly important to scientifically construct security strategies before an attack occurs. The characteristics of evolutionary algorithms are very suitable for finding optimal strategies. However, the more common evolutionary algorithms currently used have relatively large limitations in
doi:10.3390/app12199594
fatcat:dytajtgmw5hgnan6vhcu6pvo7q