Evaluation of Performance of Chlorinated Polyethylene Using Wireless Network and Artificial Intelligence Technology

Haifeng Zhang, Lian Zhou
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Abstract

Chemical enterprises are presently confronted with several difficult issues, including high power consumption, dangerous risk evaluation, and environmental regulation, all of which push industrial and academic institutions to develop new technologies, catalysts, and materials. Chlorinated polyethylene (CPE) is a polymer made by replacing H2 molecules in high density-(C2H4)n with chloride ions. CPE elastomers are made from a high density-(C2H4) backbone, and it was chlorinated using a free radical aqueous slurry technique. However, such fundamental polymer characteristics are insufficient to explain the performance characteristics of chlorinated polyethylene elastomers. Artificial intelligence (AI) has had a massive effect on all sections of the chemical sector, with tremendous potential that has revolutionized value supply chains, enhanced efficiency, and opened up new ways to the marketplace. As a result, in this research, we offer a methodology for the performance characterization of chlorinated polyethylene based on artificial intelligence (AI) and wireless network technology. The AI tools can search through enormous databases of known compounds and their attributes, leveraging the data to generate new possibilities. The dataset is first gathered. The chemical characterization is classified using the K -nearest neighbor (KNN) technique. This program was created to examine molecule structures and forecast the outcomes of new chemical reactions. Bayesian optimization is used to improve characterization performance. The proposed method will contribute to the future usage of AI in the chemical sector.
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利用无线网络和人工智能技术评价氯化聚乙烯的性能
化工企业目前面临着高能耗、危险风险评估、环境监管等难题,促使工业和学术机构不断开发新技术、新催化剂、新材料。氯化聚乙烯(CPE)是一种用氯离子取代高密度-(C2H4)n中的H2分子而制成的聚合物。CPE弹性体由高密度-(C2H4)骨架制成,并使用自由基水浆技术氯化。然而,这些基本的聚合物特性不足以解释氯化聚乙烯弹性体的性能特征。人工智能(AI)对化工行业的各个领域都产生了巨大的影响,其巨大的潜力彻底改变了价值链,提高了效率,并开辟了新的市场途径。因此,在本研究中,我们提供了一种基于人工智能(AI)和无线网络技术的氯化聚乙烯性能表征方法。人工智能工具可以搜索已知化合物及其属性的庞大数据库,利用这些数据产生新的可能性。首先收集数据集。化学性质采用K近邻(KNN)技术进行分类。创建这个程序是为了检查分子结构和预测新的化学反应的结果。贝叶斯优化用于提高表征性能。该方法将有助于人工智能在化学领域的未来应用。
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