Abstract

The main challenge of a wireless sensor network (WSN) in disaster situations is to discover efficient routing, to improve quality of service (QoS) and to reduce energy consumption. Location awareness of nodes is also useful or even necessary. Without knowing the position of sensor nodes, collected data is insignificant. Ant colony optimization (ACO) is a unique form of optimization method, which is highly suitable for adaptive routing and guaranteed packet delivery. The primary drawbacks of ACO are data flooding, huge overhead of control messages and long convergence time. These drawbacks are overcome by considering location information of sensor nodes. An event-based clustering localized energy efficient ant colony optimization (EBC_LEE-ACO) algorithm is proposed to enhance the performance of WSN. The main focus of the proposed algorithm is to improve QoS and minimize the network energy consumption by cluster formation and selecting the optimal path based on the biological inspired routing-ACO and location information of nodes. In clustering, data is aggregated and sent to the sink (base station) through cluster head (CH) which reduces overheads. EBC_LEE-ACO is a scalable and energy efficient reactive routing algorithm which improves QoS, lifetime and minimizes energy consummation of WSN as compared to other routing algorithms like AODV, ACO, ACO using RSSI. The proposed algorithm reduces energy consumption by approximately 7%, in addition to improvement in throughput, packet delivery ratio and increase in packet drop which has been observed in comparison with other algorithms, i.e. autonomous localization based eligible energetic Path_with_Ant Colony optimization (ALEEP with ACO) of the network. Use of IEEE 802.11 standard in proposed work increased packet drop.

Highlights

  • wireless sensor network (WSN) consists of a number of sensor nodes

  • To achieve the objectives we considered the following implementation steps: Design EBC_LEE-Ant colony optimization (ACO) routing algorithm by combining the advantages of ACO, received signal strength indicator (RSSI) and clustering

  • Results show that the performance parameters of the network are improved by the use of the proposed EBC_LEE-ACO algorithm in comparison with Ad-hoc on Demand Distance Vector (AODV), ACO and ACO using RSSI algorithms due to the following characteristics of the EBC_LEE-ACO algorithm: www.etasr.com

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Summary

Introduction

WSN consists of a number of sensor nodes. These nodes are small in size and have low power capacity. These multifunctional nodes are deployed in a particular area for data gathering purposes. The requirement in disaster situations is that the sensor nodes should perform the communication without failure for long duration. A traditional routing algorithm does not consider the location information and cannot be used in disaster areas where stable communication is important. Selection of routing algorithm is one of the major problems of sensor network to be solved [1,2,3]. The main goals of WSN routing are to improve QoS and network lifetime and to reduce connectivity failure

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