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機器學習助力發現高效緩蝕劑分子

Machine learning aids in the discovery of efficient corrosion inhibitor molecules

  • 摘要: 緩蝕劑是用于防止金屬材料腐蝕的化學物質,其有效性對于延長設備壽命、降低維護成本至關重要. 然而,傳統的緩蝕劑分子篩選方法,如失重測量和電化學測試,通常需要大量實驗和大量時間,成本高昂. 基于機器學習技術可以分析已知緩蝕劑分子數據,從而學習和預測新分子的緩蝕性能. 該方法可以提高篩選效率,揭示傳統方法可能忽略的分子結構和性質,但其局限性也不容忽視. 首先,緩蝕劑分子篩選模型的化合物搜索空間有限. 其次,模型在實際應用中面臨著與計算資源和時間成本相關的挑戰. 在討論了機器學習技術的應用和局限性之后,本文介紹了分子生成技術在發現新的高效緩蝕劑分子方面的應用以及挑戰. 例如,生成模型需要大量高質量數據進行訓練,生成的結果需要實驗驗證. 此外,生成模型在生成新分子時必須考慮分子穩定性、可合成性、環境影響等多種因素,使得模型的設計和優化更加復雜. 總體而言,機器學習技術在緩蝕劑分子研究中具有廣闊的應用前景,但也面臨著重大挑戰. 通過不斷優化機器學習算法并結合實驗驗證,有望在未來實現緩蝕劑分子的高效高精度發現,從而為材料科學和工業應用帶來突破.

     

    Abstract: In recent years, machine learning (ML) has demonstrated significant potential in corrosion inhibitor molecule research and has emerged as a powerful tool for scientists to explore new and efficient corrosion inhibitors. Corrosion inhibitors are chemical substances used to prevent the corrosion of metallic materials, and their effectiveness is crucial for extending equipment lifespan and reducing maintenance costs. However, traditional methods for screening corrosion inhibitor molecules, such as weight loss measurements and electrochemical testing, typically require extensive experiments and considerable time, making them costly. Consequently, the application of ML technology in this field has garnered widespread attention. This review provides an overview of the application of ML technology in screening corrosion inhibitor molecules. Artificial intelligence technologies, particularly deep learning and machine learning, can analyze vast amounts of data on known corrosion inhibitor molecules, to learn and predict the corrosion inhibition performance of new molecules. These technologies not only enhance screening efficiency but also uncover molecular structures and properties that traditional methods may overlook. Specifically, ML models can extract key information and construct predictive models through feature extraction and pattern recognition using existing data. These models can rapidly identify potential high-efficiency corrosion inhibitor molecules, thereby significantly accelerating research. However, despite the numerous advantages of ML technology in screening corrosion inhibitor molecules, its limitations cannot be ignored. First, the current compound search space for corrosion inhibitor molecule screening models remains limited. Second, these models face challenges related to computational resources and time costs in practical applications. After discussing the applications and limitations of ML technology, this study further explores the concept of molecular generation technology and its application in generating corrosion inhibitor molecules. Molecular generation technology employs deep learning techniques for automatically generating new molecular structures, often based on generative models such as generative adversarial networks (GANs) and variational autoencoders (VAEs). These technologies can learn the rules of molecular generation from existing corrosion inhibitor molecule data and generate new molecules with specific properties. Molecular generation technology can help researchers discover new and efficient corrosion-inhibitor molecules and accelerate the development of new materials. Finally, this paper highlights the challenges faced by generative machine learning models in the discovery of efficient corrosion inhibitor molecules. Although generative models have shown great potential for molecule generation and screening, their application in the discovery of corrosion inhibitors still faces many challenges. For example, generative models require large amounts of high-quality data for training, and the generated results require experimental validation. Moreover, when generating new molecules, generative models must consider various factors, such as molecular stability, synthesizability, and environmental impact, making the design and optimization of these models more complex. Overall, ML technology holds broad application prospects in the research on corrosion inhibitor molecules; however, it also faces significant challenges. Continuously optimizing ML algorithms and combining them with experimental validation should contribute to the efficient and high-precision discovery of corrosion inhibitor molecules in the future, leading to breakthroughs in materials science and industrial applications.

     

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