Abstract

In order to exploit plants as environmental biosensors, previous researches have been focused on the electrical signal response of the plants to different environmental stimuli. One of the important outcomes of those researches has been the extraction of meaningful features from the electrical signals and the use of such features for the classification of the stimuli which affected the plants. The classification results are dependent on the classifier algorithm used, features extracted and the quality of data. This paper presents an innovative way of extracting features from raw plant electrical signal response to classify the external stimuli which caused the plant to produce such a signal. A curve fitting approach in extracting features from the raw signal for classification of the applied stimuli has been adopted in this work, thereby evaluating whether the shape of the raw signal is dependent on the stimuli applied. Four types of curve fitting models—Polynomial, Gaussian, Fourier and Exponential, have been explored. The fitting accuracy (i.e., fitting of curve to the actual raw signal) depicted through R-squared values has allowed exploration of which curve fitting model performs best. The coefficients of the curve fit models were then used as features. Thereafter, using simple classification algorithms such as Linear Discriminant Analysis (LDA), Quadratic Discriminant Analysis (QDA) etc. within the curve fit coefficient space, we have verified that within the available data, above 90% classification accuracy can be achieved. The successful hypothesis taken in this work will allow further research in implementing plants as environmental biosensors.

Highlights

  • Our surrounding natural environment is one of the most important aspect in our lives, wherever we are geographically located in the world

  • The specific aim of this paper is to explore the possibility of detecting these three pollutants, i.e., O3, NaCl and H2 SO4, from the electrical response generated by the plants

  • Section,we wepresent presentthethe classification results obtained during retrospective. In this classification results obtained during retrospective studystudy

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Summary

Introduction

Our surrounding natural environment is one of the most important aspect in our lives, wherever we are geographically located in the world. Two of the main constituents of our surrounding environment are the flora—plants and trees which provide us with oxygen and fruits, the vital components required for us human beings, and fauna—the animals. Many institutions across the globe constantly monitor our environment for pollutants which may harm us and the flora/fauna, directly or indirectly. Such a monitoring system may present us with valuable real time information which can be used to control or even prevent any short/long term damage to the environment we are surrounded by and Biosensors 2018, 8, 83; doi:10.3390/bios8030083 www.mdpi.com/journal/biosensors

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