Root System Water Consumption Pattern Identification on Time Series Data

Sensors (Basel). 2017 Jun 16;17(6):1410. doi: 10.3390/s17061410.

Abstract

In agriculture, soil and meteorological sensors are used along low power networks to capture data, which allows for optimal resource usage and minimizing environmental impact. This study uses time series analysis methods for outliers' detection and pattern recognition on soil moisture sensor data to identify irrigation and consumption patterns and to improve a soil moisture prediction and irrigation system. This study compares three new algorithms with the current detection technique in the project; the results greatly decrease the number of false positives detected. The best result is obtained by the Series Strings Comparison (SSC) algorithm averaging a precision of 0.872 on the testing sets, vastly improving the current system's 0.348 precision.

Keywords: Internet of Things; data science; pattern recognition; precision agriculture; time series analysis.