Using Markov Chains and Multi-Objective Optimization for Energy-Efficient Context Recognition

Sensors (Basel). 2017 Dec 29;18(1):80. doi: 10.3390/s18010080.

Abstract

The recognition of the user's context with wearable sensing systems is a common problem in ubiquitous computing. However, the typically small battery of such systems often makes continuous recognition impractical. The strain on the battery can be reduced if the sensor setting is adapted to each context. We propose a method that efficiently finds near-optimal sensor settings for each context. It uses Markov chains to simulate the behavior of the system in different configurations and the multi-objective genetic algorithm to find a set of good non-dominated configurations. The method was evaluated on three real-life datasets and found good trade-offs between the system's energy expenditure and the system's accuracy. One of the solutions, for example, consumed five-times less energy than the default one, while sacrificing only two percentage points of accuracy.

Keywords: Markov chains; context recognition; energy efficiency; modeling; optimization.