Budi Setia, de Souza Paulo, Timms Greg, Malhotra Vishv, Turner Paul
School of Engineering and ICT, University of Tasmania, Private Bag 87, Hobart, TAS 7001, Australia.
Commonwealth Scientific and Industrial Research Organisation, 15 College Road, Sandy Bay, TAS 7005, Australia.
Sensors (Basel). 2015 Nov 27;15(12):29765-81. doi: 10.3390/s151229765.
This work proposes the design of Environmental Sensor Networks (ESN) through balancing robustness and redundancy. An Evolutionary Algorithm (EA) is employed to find the optimal placement of sensor nodes in the Region of Interest (RoI). Data quality issues are introduced to simulate their impact on the performance of the ESN. Spatial Regression Test (SRT) is also utilised to promote robustness in data quality of the designed ESN. The proposed method provides high network representativeness (fit for purpose) with minimum sensor redundancy (cost), and ensures robustness by enabling the network to continue to achieve its objectives when some sensors fail.
这项工作通过平衡鲁棒性和冗余性来提出环境传感器网络(ESN)的设计。采用进化算法(EA)来找到感兴趣区域(RoI)中传感器节点的最优布局。引入数据质量问题以模拟它们对ESN性能的影响。还利用空间回归测试(SRT)来提高所设计的ESN的数据质量鲁棒性。所提出的方法以最小的传感器冗余(成本)提供高网络代表性(符合目的),并通过使网络在一些传感器发生故障时仍能继续实现其目标来确保鲁棒性。