Deep Reinforcement Learning for Online Error Detection in Cyber-Physical Systems
Seyyedamirhossein Saeidi, Forouzan Fallah, Saeed, Samieezafarghandi, Hamed Farbeh

TL;DR
This paper introduces a deep reinforcement learning-based method for real-time error detection in cyber-physical systems, significantly improving accuracy and speed over traditional fault detection techniques.
Contribution
It proposes a novel DRL approach that detects and categorizes errors instantly, addressing limitations of existing fault-tolerance methods in CPSs.
Findings
Over 2x improvement in detection accuracy
Over 5x reduction in inference time
Effective categorization of error types
Abstract
Reliability is one of the major design criteria in Cyber-Physical Systems (CPSs). This is because of the existence of some critical applications in CPSs and their failure is catastrophic. Therefore, employing strong error detection and correction mechanisms in CPSs is inevitable. CPSs are composed of a variety of units, including sensors, networks, and microcontrollers. Each of these units is probable to be in a faulty state at any time and the occurred fault can result in erroneous output. The fault may cause the units of CPS to malfunction and eventually crash. Traditional fault-tolerant approaches include redundancy time, hardware, information, and/or software. However, these approaches impose significant overheads besides their low error coverage, which limits their applicability. In addition, the interval between error occurrence and detection is too long in these approaches. In…
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Taxonomy
TopicsSmart Grid Security and Resilience · Software Reliability and Analysis Research · IoT and Edge/Fog Computing
Methodsfail
