A Genetic Algorithm Approach to Motion Sensor Placement in Smart Environments

J Reliab Intell Environ. 2016 Apr;2(1):3-16. doi: 10.1007/s40860-015-0015-1. Epub 2015 Dec 8.

Abstract

Smart environments and ubiquitous computing technologies hold great promise for a wide range of real world applications. The medical community is particularly interested in high quality measurement of activities of daily living. With accurate computer modeling of older adults, decision support tools may be built to assist care providers. One aspect of effectively deploying these technologies is determining where the sensors should be placed in the home to effectively support these end goals. This work introduces and evaluates a set of approaches for generating sensor layouts in the home. These approaches range from the gold standard of human intuition-based placement to more advanced search algorithms, including Hill Climbing and Genetic Algorithms. The generated layouts are evaluated based on their ability to detect activities while minimizing the number of needed sensors. Sensor-rich environments can provide valuable insights about adults as they go about their lives. These sensors, once in place, provide information on daily behavior that can facilitate an aging-in-place approach to health care.

Keywords: Genetic Algorithms; Machine Learning; Sensor Placement; Smart Environments.