A Federated Texture Learning and Scheduling (FTLS) for Energy Efficient Data Aggregation Model in WSN System

C. L. Anitha, R. Sumathi
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Abstract

In the Wireless Sensor Network (WSN) system, the sensor data aggregation and the dissemination are major key factor that needs to consider for the effective sensor data transmission over the sensor nodes. For that, the statistical parameters from the sensor data that are captures by the sensor deices in different applications. The wireless sensors are sending their parameters to the sink for further analytical process and for the sensor data aggregation. The main features of this paper is to analyse the different clustering models for the sensor data feature learning models to enhance the texture based learning model by using Federated Texture Learning and Scheduling (FTLS). This also improves the data preprocessing, aggregation and clustering, based on the feature learning and scheduling of cluster management. This leads to energy efficient clustering model and the data aggregation model in WSN network system. Typically, the sensor data prediction and the arrangement becomes the critical issue in the industrial communication systems based on the size of data arguments. Considering of this, the proposed work intends to develop an optimization model for reducing the dimensionality of sensor data with improved classification performance. Related to that the machine learning based clustering technique is to develop the data arrangement with better performance rate in terms of statistical analysis and reduced time complexity factors. The experimental result justifies the performance of proposed work by comparing the existing methods by using validation of parameters of statistical analysis such as Sensitivity, Precision, F-Score and Accuracy.
基于联邦纹理学习和调度的WSN系统节能数据聚合模型
在无线传感器网络(WSN)系统中,传感器数据的聚合和传播是传感器节点间有效传输传感器数据需要考虑的关键因素。为此,传感器设备在不同应用中捕获的传感器数据的统计参数。无线传感器将其参数发送到接收器,用于进一步分析过程和传感器数据聚合。本文的主要特点是分析了传感器数据特征学习模型的不同聚类模型,利用联邦纹理学习和调度(FTLS)来增强基于纹理的学习模型。基于聚类管理的特征学习和调度,改进了数据的预处理、聚合和聚类。这就产生了WSN网络系统中节能的聚类模型和数据聚合模型。通常,基于数据参数大小的传感器数据预测和排列成为工业通信系统中的关键问题。考虑到这一点,本工作旨在开发一种优化模型,在提高分类性能的同时降低传感器数据的维数。与此相关的基于机器学习的聚类技术是在统计分析和减少时间复杂性因素方面开发具有更好性能的数据排列。实验结果通过对灵敏度、精度、F-Score和准确度等统计分析参数的验证,比较了现有方法的有效性。
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