Performance Comparison of Non-Linear Median Filter Built on MLP-ANN and Conventional MLP-ANN: Using Improved Dataset Training in Micro-Cell Environment
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引用次数: 0
Abstract
This research work explores the Levenberg- Marquardt training algorithm used for Artificial Neural Network (ANN) optimization during training and the Bayesian Regularization algorithm for the enhanced generalized trained network in training a designed non-linear vector median filter built on Multi-Layer Perceptron (MLP) ANN called model-1 and a conventional MLP ANN called model-2. The model-1 employed in the design helps in dataset de-noising to ensure the removal of unwanted signals for the improved training dataset. An early stopping method in the ratio of 80:10:10 for training, testing, and validation to overcome the problem of over-fitting during network training was employed. First-order statistical indices, the standard deviation, root mean squared error, mean absolute error, and correlation coefficient were adopted for network training analysis and comparative analysis of the designed model-1 and model-2, respectively. Two locations, Line-of-sight (location-1) and non-Line-of-Sight (location-2), were considered where the dataset was captured. The training results from the two locations for the two models demonstrated improved prediction of signal power loss using model-1 in comparison to model-2. For instance, the correlation coefficient, which shows the strength of the predicted value to the measured values (closer to 1) establishing a strong connection, gives 0.990 and 0.995 using model-1 for location-1, training with Lavenberg-Marquardt and Bayesian Regularization algorithm, respectively and 0.965 and 0.980 for model-2 using the same algorithms. It is seen that the Bayesian regularization algorithm, which optimizes the network in accordance with the Levenberg- Marquardt algorithm, gave better prediction results. The same sequence of improved perditions using designed model-1 in comparison to model-2 were seen with training results in location-2 while also adopting other employed 1st order statistical indices.
本研究探索了用于人工神经网络(ANN)训练优化的Levenberg- Marquardt训练算法,以及用于增强广义训练网络的贝叶斯正则化算法,用于训练基于多层感知器(MLP) ANN (model-1)和传统MLP ANN (model-2)的非线性向量中值滤波器。设计中使用的model-1有助于数据集去噪,以确保对改进的训练数据集去除不需要的信号。为了克服网络训练过程中的过拟合问题,采用80:10:10的训练、测试和验证提前停止方法。采用一阶统计指标,标准差、均方根误差、平均绝对误差和相关系数分别对设计的模型-1和模型-2进行网络训练分析和对比分析。两个位置,视距(location-1)和非视距(location-2),被认为是捕获数据集的位置。两种模型的两个位置的训练结果表明,与模型2相比,使用模型1可以更好地预测信号功率损失。例如,相关系数表明预测值与实测值之间的强度(更接近于1)建立了较强的联系,使用Lavenberg-Marquardt和Bayesian正则化算法对location-1进行训练,使用model-1分别给出0.990和0.995,使用相同算法对model-2进行训练,分别给出0.965和0.980。可以看出,根据Levenberg- Marquardt算法对网络进行优化的贝叶斯正则化算法给出了更好的预测结果。与模型2相比,使用设计的模型1改进条件的序列与位置-2的训练结果相同,同时也采用了其他一阶统计指标。
期刊介绍:
JCM is a scholarly peer-reviewed international scientific journal published monthly, focusing on theories, systems, methods, algorithms and applications in communications. It provide a high profile, leading edge forum for academic researchers, industrial professionals, engineers, consultants, managers, educators and policy makers working in the field to contribute and disseminate innovative new work on communications. All papers will be blind reviewed and accepted papers will be published monthly which is available online (open access) and in printed version.