
In order to prolong the network lifetime, energy-efficient protocols adapted to the features of wireless sensor networks should be used. This paper explores in depth the nature of heterogeneous wireless sensor networks, and finally proposes an algorithm to address the problem of finding an effective pathway for heterogeneous clustering energy. The proposed algorithm implements cluster head selection according to the degree of energy attenuation during the network’s running and the degree of candidate nodes’ effective coverage on the whole network, so as to obtain an even energy consumption over the whole network for the situation with high degree of coverage. Simulation results show that the proposed clustering protocol has better adaptability to heterogeneous environments than existing clustering algorithms in prolonging the network lifetime.
Chemical technology, TP1-1185, Article, heterogeneous wireless sensor networks; sensor computing; distributed clustering algorithm; collaborative information processing; energy efficient; mobile sensor, heterogeneous wireless sensor networks, mobile sensor, energy efficient, collaborative information processing, sensor computing, distributed clustering algorithm
Chemical technology, TP1-1185, Article, heterogeneous wireless sensor networks; sensor computing; distributed clustering algorithm; collaborative information processing; energy efficient; mobile sensor, heterogeneous wireless sensor networks, mobile sensor, energy efficient, collaborative information processing, sensor computing, distributed clustering algorithm
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