Artificial Olfactory System for Distinguishing Oil-Contaminated Soils

Q3 Social Sciences
Dina Satybaldina, Marat Baydeldinov, Aliya Issainova, Olzhas Alseitov, Assem Konyrkhanova, Zhanar Akhmetova, Shakhmaran Seilov
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引用次数: 0

Abstract

Oil-contaminated soils are a major environmental problem for Kazakhstan. Oil spills or leaks lead to profound changes in the physical and agrochemical properties of the soil and the accumulation of hazardous substances. Whilst there are many remote sensing techniques and complex laboratory methods for oil spill detection, developing simple, reliable, and inexpensive tools for detecting the presence of pollutants in the soil is a relevant research task. The study aims to research the possibilities of an electronic nose combining a chemical sensor array with pattern recognition techniques to distinguish volatile organic compounds from several types of hydrocarbon soil pollutants. An electronic nose system was assembled in our laboratory. It includes eight gas metal oxide sensors, a humidity and temperature sensor, an analog-digital processing unit, and a data communication unit. We measured changes in the electrical conductivity of sensors in the presence of volatile organic compounds released from oil and petroleum products and samples of contaminated and uncontaminated soils. The list of experimental samples includes six types of soils corresponding to different soil zones of Kazakhstan, crude oil from three oil fields in Kazakhstan, and five types of locally produced fuel oil (including gasoline, kerosene, diesel fuel, engine oil, and used engine oil). We used principal component analysis to statistically process multidimensional sensor data, feature extraction, and collect the volatile fingerprint dataset. Pattern recognition using machine learning algorithms made it possible to classify digital fingerprints of samples with an average accuracy of about 92%. The study results show that electronic nose sensors are sensitive to soil hydrocarbon content. The proposed approach based on machine olfaction is a fast, accurate, and inexpensive method for detecting oil spills and leaks, and it can complement remote sensing methods based on computer vision.
识别油渍土壤的人工嗅觉系统
受石油污染的土壤是哈萨克斯坦的一个主要环境问题。石油泄漏或泄漏导致土壤的物理和农业化学性质发生深刻变化,并导致有害物质的积累。虽然有许多遥感技术和复杂的实验室方法用于石油泄漏检测,但开发简单、可靠和廉价的工具来检测土壤中污染物的存在是一项相关的研究任务。该研究旨在研究电子鼻结合化学传感器阵列和模式识别技术的可能性,以从几种碳氢化合物土壤污染物中区分挥发性有机化合物。在我们的实验室组装了一个电子鼻系统。它包括八个气体金属氧化物传感器、一个湿度和温度传感器、一个模拟数字处理单元和一个数据通信单元。我们测量了从石油和石油产品中释放的挥发性有机化合物以及受污染和未受污染的土壤样品中传感器电导率的变化。实验样品清单包括与哈萨克斯坦不同土壤带相对应的六种土壤,哈萨克斯坦三个油田的原油,以及当地生产的五种燃料油(包括汽油、煤油、柴油、机油和二手机油)。我们利用主成分分析对多维传感器数据进行统计处理,提取特征,并收集挥发性指纹数据集。使用机器学习算法的模式识别使样本的数字指纹分类成为可能,平均准确率约为92%。研究结果表明,电子鼻传感器对土壤碳氢化合物含量敏感。该方法是一种快速、准确、廉价的石油泄漏和泄漏检测方法,可以与基于计算机视觉的遥感方法相补充。
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来源期刊
CiteScore
1.90
自引率
0.00%
发文量
118
期刊介绍: WSEAS Transactions on Environment and Development publishes original research papers relating to the studying of environmental sciences. We aim to bring important work to a wide international audience and therefore only publish papers of exceptional scientific value that advance our understanding of these particular areas. The research presented must transcend the limits of case studies, while both experimental and theoretical studies are accepted. It is a multi-disciplinary journal and therefore its content mirrors the diverse interests and approaches of scholars involved with sustainable development, climate change, natural hazards, renewable energy systems and related areas. We also welcome scholarly contributions from officials with government agencies, international agencies, and non-governmental organizations.
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