针对传感网测量水质数据过程中存在的必然不确定性和随机不确定性,提出了一种基于区间证据理论的多传感器数据融合水质判断方法。考虑传感器精度误差以及测量数据异常等问题,将每个传感器测量的水质数据用区间数表示,通过计算水质数据与每个水质等级特征值之间的距离,得到判断水质等级的区间证据。按照区间证据组合规则将多传感器的区间证据融合成综合区间证据,最后根据决策准则,由综合区间证据判断水质等级。实验表明,该方法能够从不确定水质数据中准确判断水质等级。
For the inevitable uncertainty and random uncertainty in the process of measuring water quality data with the sensor network, a multi-sensor data fusion method for water quality evaluation based on interval evidence theory was proposed. Considering the precision error of sensor and the abnormalities of measured data, every water quality data measured by sensor was represented by interval number. By calculating the distance between the water quality data and the features of each water quality class, the interval evidence of water quality class was acquired. According to the interval evidence combining rule, a comprehensive interval evidence was obtained by combining the interval evidence of each sensor. Finally, the water quality class was determined based on the comprehensive interval evidence by the decision rule. Experiments show that the proposed method can evaluate water quality class more accurately from the uncertain water quality data.