Hiring in life sciences? Share your open positions with our professional community. Read more Close

Advertisement

A sustainable driven intrusion detection model for green CPS using ISP analysis and energy aware deep ensemble learning.

Created on 13 Jul 2026

Authors

Maloth Sagar, C Vanmathi

Published in

Scientific reports. Jul 12, 2026. Epub Jul 12, 2026.

Abstract

Intrusion Detection Systems (IDSs) play a fundamental role in ensuring the reliability of green Cyber-Physical Systems (CPSs). Yet, existing IDS approaches did not capture the Inconsistent Sequential Pattern (ISP) in green CPS, thus resulting in high misclassification and limited sustainability. To address this issue, this study proposes a sustainability-driven ISP-aware intrusion detection framework that integrates ISP analysis and an energy-aware optimized deep ensemble learning model. The proposed framework encompasses the major layers, including the perception layer, transport layer, network layer, and control layer. The perception layer is responsible for authentication, whereas the transmission layer acts as an intermediate node between the perception layer and the network layer. Here, the network layer is generalized well enough to perform ISP-aware intrusion detection. Further, the proposed approach employs behavioral similarity modeling to enable fine-grained intrusion detection across CPS layers. Moreover, an optimized deep ensemble model is employed to detect intrusions while ensuring computational efficiency and generalization. Finally, the commands are executed through the actuator in the control layer. Thus, the proposed work obtains noticeable accuracies of 99.0654% and 99.4523% regarding network and IoT data, respectively. Hence, the experimental results confirm that the incorporation of ISP analysis significantly enhances IDS reliability and resilience in green CPS environments.

PMID:
42437788
Bibliographic data and abstract were imported from PubMed on 13 Jul 2026.

Read full publication at:
Please sign in to see all details.

Advertisement

Stats

  • Community rating n/a 0 votes
  • Reviewers' rating n/a 0 votes
  • Your rating

1-terrible, 9-excellent. How would you rate this publication? Sign in in to submit your rating.

  • Recommendations n/a n/a positive of 0 vote(s)
  • Views 6
  • Comments 0

Recommended by

  • No recommendations yet.

Post a comment

You need to be signed in to post comments. You can sign in here.

Comments

There are no comments yet.

Advertisement