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Filters: Keyword is Adaptive software  [Clear All Filters]
2020-03-09
Salehie, Mazeiar, Pasquale, Liliana, Omoronyia, Inah, Nuseibeh, Bashar.  2012.  Adaptive Security and Privacy in Smart Grids: A Software Engineering Vision. 2012 First International Workshop on Software Engineering Challenges for the Smart Grid (SE-SmartGrids). :46–49.

Despite the benefits offered by smart grids, energy producers, distributors and consumers are increasingly concerned about possible security and privacy threats. These threats typically manifest themselves at runtime as new usage scenarios arise and vulnerabilities are discovered. Adaptive security and privacy promise to address these threats by increasing awareness and automating prevention, detection and recovery from security and privacy requirements' failures at runtime by re-configuring system controls and perhaps even changing requirements. This paper discusses the need for adaptive security and privacy in smart grids by presenting some motivating scenarios. We then outline some research issues that arise in engineering adaptive security. We particularly scrutinize published reports by NIST on smart grid security and privacy as the basis for our discussions.

2018-09-05
Maggio, Martina, Papadopoulos, Alessandro Vittorio, Filieri, Antonio, Hoffmann, Henry.  2017.  Automated Control of Multiple Software Goals Using Multiple Actuators. Proceedings of the 2017 11th Joint Meeting on Foundations of Software Engineering. :373–384.

Modern software should satisfy multiple goals simultaneously: it should provide predictable performance, be robust to failures, handle peak loads and deal seamlessly with unexpected conditions and changes in the execution environment. For this to happen, software designs should account for the possibility of runtime changes and provide formal guarantees of the software's behavior. Control theory is one of the possible design drivers for runtime adaptation, but adopting control theoretic principles often requires additional, specialized knowledge. To overcome this limitation, automated methodologies have been proposed to extract the necessary information from experimental data and design a control system for runtime adaptation. These proposals, however, only process one goal at a time, creating a chain of controllers. In this paper, we propose and evaluate the first automated strategy that takes into account multiple goals without separating them into multiple control strategies. Avoiding the separation allows us to tackle a larger class of problems and provide stronger guarantees. We test our methodology's generality with three case studies that demonstrate its broad applicability in meeting performance, reliability, quality, security, and energy goals despite environmental or requirements changes.