Abstract

Artificial neural networks (ANN) are widely used to classify high non-linear systems by using a set of input/output data. Moreover, they are trained using several optimization methodologies and this paper presents a novel algorithm for training ANN through an earthquake optimization method. Usually, gradient optimization method is implemented for the training process, with perhaps the large number of iterations leading to slow convergence, and not always achieving the optimal solution. Since metaheuristic optimization methods deal with searching for weight values in a broad optimization space, the training computational effort is reduced and ensures an optimal solution. This work shows an efficient training process that is a suitable solution for detection of mobile phone usage while driving. The main advantage of training ANN using the Earthquake Algorithm (EA) lies in its versatility to search in a fine or aggressive way, which extends its field of application. Additionally, a basic example of a linear classification is illustrated using the proposal-training method, so the number of applications could be expanded to nano-sensors, such as reversible logic circuit synthesis in which a genetic algorithm had been implemented. The fine search is important for the studied logic gate emulation due to the small searching areas for the linear separation, also demonstrating the convergence capabilities of the algorithm. Experimental results validate the proposed method for smart mobile phone applications that also can be applied for optimization applications.

Highlights

  • The economic and social benefits in nanotechnology have brought significant research and development (R&D) to governments and industries worldwide for two decades [1]

  • The principal areas of interest in nanotechnology are advanced materials, catalysts, nanoelectronics, molecular medicine, energy conversion, and storage [2]. These R&D have developed new opportunity areas, to create intelligent systems to solve problems based on human intelligence. This can be possible with artificial neural network (ANN) which is inspired by the human brain-learning activity, with the objective of solving classification problems

  • The following results present the capability of the Earthquake Algorithm (EA) to adapt for different optimization study cases, where first the ANN training results are presented, and later the mobile phone usage detection while driving results are analyzed

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Summary

Introduction

The economic and social benefits in nanotechnology have brought significant research and development (R&D) to governments and industries worldwide for two decades [1]. The principal areas of interest in nanotechnology are advanced materials, catalysts, nanoelectronics, molecular medicine, energy conversion, and storage [2]. These R&D have developed new opportunity areas, to create intelligent systems to solve problems based on human intelligence. This can be possible with artificial neural network (ANN) which is inspired by the human brain-learning activity, with the objective of solving classification problems. The application areas of ANN in nanotechnology involve classification, diagnosis, monitoring, process control, design, scheduling, and planning, and so on [3]. According to [4], ANN is the most powerful solution in sensors pre-processing information; these types of network can adapt their behavior without previous knowledge of a particular sensor response

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