This paper introduces sufficient and necessary sets for distributed processing of probabilistic top-k queries in cluster-based wireless sensor networks, facilitating data pruning and communication. It presents algorithms that significantly reduce data transmission and adaptively switch to optimize performance under various conditions. Experimental results demonstrate the effectiveness of the proposed algorithms in minimizing transmission costs while maintaining energy efficiency.