Sunil Kumar Srivastava , Kedari Lal Dhaker
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摘要

气候变化是人类文明现阶段亟需关注的重大问题,而合成塑料和聚合物的作用又加剧了气候变化。它们以石油化工为基础的合成和不可生物降解的特性带来了令人担忧的威胁。众所周知,包括塑料在内的合成聚合物是危险材料,会以各种方式影响人类文明。聚合物中的不可逆共价交联赋予其更好的机械性能(耐热性和耐化学性),降低了回收和再利用化学合成聚合物的可能性。研究报告指出,每 5 秒钟就有 60000 个塑料袋被使用。解决聚合物生物质塑料材料的有害影响迫在眉睫。这些材料质量上乘,可生物降解,是一种更具可持续性的替代品。这项研究利用大豆废料开发可持续的环保生物材料,强调了立即采取行动消除塑料污染的迫切需要。本文介绍了一种以数据为驱动的创新方法,用于合成、表征和实验研究生物质塑料。这项研究工作采用了基于人工智能(AI)的尖端工具,如自适应神经模糊推理系统(ANFIS)和人工神经网络(ANN),以及统计方法响应面方法(RSM),标志着该领域新颖而令人兴奋的发展。这些工具被用于开发一种可自动合成生物质塑料的模型。数据验证表明,吸水率的平均绝对误差为 1.40%,而甲醇吸水率的平均绝对误差为 0.87%。对合成的大豆基生物塑料进行了傅立叶变换红外光谱(FTIR)、DTA 和 TGA 仪器分析,结果令人满意。实验室还研究了其他物理性质,如溶解性、生物降解性和化学反应性。采用响应面法(RSM)对大豆、玉米、甘油、醋和水的组合进行了优化。之所以选择这种独特的组合,是因为它具有生产高质量、可生物降解的生物质塑料的潜力,从而有助于可持续材料的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven approach for synthesizing, characterization, and experimental investigation of biomass-based plastic
Climate change, an urgent and significant concern in our current stage of human civilization, is exacerbated by the role of synthetic plastic and polymers. Their petrochemical-based synthesis and non-biodegradable nature pose alarming threats. Synthetic polymers, including plastic, are known to be dangerous materials that impact human civilization in various ways. The irreversible covalent crosslink in polymer imparts better mechanical properties (thermal and chemical resistance), reducing the possibility of recycling and reusing chemically synthesized polymer. The study reports that ∼60000 plastic bags are used every 5 seconds. The need to address the detrimental impacts of polymer biomass-based plastic materials is urgent. These materials offer a more sustainable alternative with their superior quality and biodegradability. This research utilizes soya waste to develop sustainable environmental biomaterials, emphasizing the pressing need for immediate action to combat plastic pollution. This article presents an innovative, data-driven approach for synthesizing, characterizing, and experimentally investigating biomass-based plastic. The use of cutting-edge Artificial Intelligence (AI) based tools like Adaptive Neuro-Fuzzy Inference System (ANFIS) and Artificial Neural Network (ANN), as well as statistical approach Response Surface Methodology (RSM), were adopted in this research work, marking a novel and exciting development in the field. These tools were used to develop a model that automates synthesizing biomass-based plastic. The data validation indicates a mean absolute error in water absorption of ∼1.40 % while in methanol, 0.87 %. The synthesized soy-based bioplastic was analyzed instrumentally through FTIR, DTA, and TGA, which yielded satisfactory results. Other physical properties like solubility, biodegradability, and chemical reactivity were also studied in the laboratory. The combination of soy, corn, glycerol, vinegar, and water was optimized using the Response Surface Methodology (RSM). This unique combination was chosen for its potential to produce a high-quality, biodegradable biomass-based plastic, thereby contributing to the development of sustainable materials.
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