Wireless sensor networks are increasingly used in monitoring and safety?critical environments, where data must be preserved even if nodes fail. Nodes can die from battery depletion, hardware faults, or harsh conditions, breaking routes and permanently losing the measurements stored on them. Traditional designs often rely on fixed routes and central sinks, so failure of key nodes disrupts connectivity and destroys locally held data. The proposed work introduces a swarm-based decentralized memory sharing scheme that adds a lightweight redundancy layer. Each node stores its own readings and also keeps small, encoded fragments of data from nearby nodes. Periodically, sensed data are split into multiple erasure-coded fragments, and subsets are shared with neighbours, which buffer them in limited memory. If a node stops sending heartbeats and is considered failed, surviving neighbours forward their stored fragments to a recovery point, where the original readings are reconstructed as long as enough fragments arrive. Simulations show that this approach significantly improves post-failure data recovery compared to a conventional architecture, while keeping communication and energy overhead much lower than full data replication, making it well-suited for long-lived industrial, environmental and safety-critical monitoring deployments.
| Published in | American Journal of Engineering and Technology Management (Volume 11, Issue 2) |
| DOI | 10.11648/j.ajetm.20261102.11 |
| Page(s) | 16-19 |
| Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
| Copyright |
Copyright © The Author(s), 2026. Published by Science Publishing Group |
Wireless Sensor Networks, Swarm Intelligence, Decentralized Data Recovery, Fault Tolerance, Bio-inspired Computing, IoT Resilience, Self-Healing Networks
Parameter | Value |
|---|---|
Network Simulator | MATLAB / NS-3 |
Number of Nodes | 50, 100, 150 |
Network Area | 100m × 100m |
Communication Range | 20m (radio range) |
Sensing Interval | 60 seconds |
Chirp Frequency | 5 minutes (high priority), 30 minutes (routine) |
Erasure Coding | k=3, m=2 (requires 3 of 5 fragments) |
Node Failure Rate | 10%, 20%, 30% random failures |
Energy Model | IEEE 802.15.4 (Zigbee) |
Initial Battery | 3.6V, 2500mAh (AA battery) |
Simulation Duration | 30 days |
Node Failure Rate | Traditional WSN | Full Replication | BISM Protocol |
|---|---|---|---|
10% (5 nodes) | 0% | 98.7% | 99.2% |
20% (10 nodes) | 0% | 95.3% | 98.5% |
30% (15 nodes) | 0% | 87.6% | 96.8% |
Metric | Description |
|---|---|
Data Recovery Rate | Percentage of data successfully recovered after node failure. |
Energy Consumption | mJ per node per day (transmission + reception + storage) |
Storage Overhead | Bytes per node for buffer management |
Recovery Latency | Time from failure detection to data reconstruction |
Network Throughput | Mbps of chirp traffic vs. traditional replication |
Fault Tolerance | Maximum number of simultaneous node failures tolerated |
WSN | Wireless Sensor Network |
BISM | Bat-Inspired Swarm Memory |
IoT | Internet of Things |
RS | Reed–Solomon |
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APA Style
A, A. (2026). Swarm-Based Decentralized Memory Sharing for Resilient Wireless Sensor Deployments. American Journal of Engineering and Technology Management, 11(2), 16-19. https://doi.org/10.11648/j.ajetm.20261102.11
ACS Style
A, A. Swarm-Based Decentralized Memory Sharing for Resilient Wireless Sensor Deployments. Am. J. Eng. Technol. Manag. 2026, 11(2), 16-19. doi: 10.11648/j.ajetm.20261102.11
@article{10.11648/j.ajetm.20261102.11,
author = {Archanna A},
title = {Swarm-Based Decentralized Memory Sharing for Resilient Wireless Sensor Deployments},
journal = {American Journal of Engineering and Technology Management},
volume = {11},
number = {2},
pages = {16-19},
doi = {10.11648/j.ajetm.20261102.11},
url = {https://doi.org/10.11648/j.ajetm.20261102.11},
eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ajetm.20261102.11},
abstract = {Wireless sensor networks are increasingly used in monitoring and safety?critical environments, where data must be preserved even if nodes fail. Nodes can die from battery depletion, hardware faults, or harsh conditions, breaking routes and permanently losing the measurements stored on them. Traditional designs often rely on fixed routes and central sinks, so failure of key nodes disrupts connectivity and destroys locally held data. The proposed work introduces a swarm-based decentralized memory sharing scheme that adds a lightweight redundancy layer. Each node stores its own readings and also keeps small, encoded fragments of data from nearby nodes. Periodically, sensed data are split into multiple erasure-coded fragments, and subsets are shared with neighbours, which buffer them in limited memory. If a node stops sending heartbeats and is considered failed, surviving neighbours forward their stored fragments to a recovery point, where the original readings are reconstructed as long as enough fragments arrive. Simulations show that this approach significantly improves post-failure data recovery compared to a conventional architecture, while keeping communication and energy overhead much lower than full data replication, making it well-suited for long-lived industrial, environmental and safety-critical monitoring deployments.},
year = {2026}
}
TY - JOUR T1 - Swarm-Based Decentralized Memory Sharing for Resilient Wireless Sensor Deployments AU - Archanna A Y1 - 2026/03/27 PY - 2026 N1 - https://doi.org/10.11648/j.ajetm.20261102.11 DO - 10.11648/j.ajetm.20261102.11 T2 - American Journal of Engineering and Technology Management JF - American Journal of Engineering and Technology Management JO - American Journal of Engineering and Technology Management SP - 16 EP - 19 PB - Science Publishing Group SN - 2575-1441 UR - https://doi.org/10.11648/j.ajetm.20261102.11 AB - Wireless sensor networks are increasingly used in monitoring and safety?critical environments, where data must be preserved even if nodes fail. Nodes can die from battery depletion, hardware faults, or harsh conditions, breaking routes and permanently losing the measurements stored on them. Traditional designs often rely on fixed routes and central sinks, so failure of key nodes disrupts connectivity and destroys locally held data. The proposed work introduces a swarm-based decentralized memory sharing scheme that adds a lightweight redundancy layer. Each node stores its own readings and also keeps small, encoded fragments of data from nearby nodes. Periodically, sensed data are split into multiple erasure-coded fragments, and subsets are shared with neighbours, which buffer them in limited memory. If a node stops sending heartbeats and is considered failed, surviving neighbours forward their stored fragments to a recovery point, where the original readings are reconstructed as long as enough fragments arrive. Simulations show that this approach significantly improves post-failure data recovery compared to a conventional architecture, while keeping communication and energy overhead much lower than full data replication, making it well-suited for long-lived industrial, environmental and safety-critical monitoring deployments. VL - 11 IS - 2 ER -