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涂層等離子噴涂技術進展研究:從粒子飛行到飛濺形成

Advances in Plasma Spraying Technology for Coatings: From Particle Flight to Splat Formation

  • 摘要: 等離子噴涂技術因其高效性和多功能性而在工業領域得到了廣泛應用。通過利用超高溫和高速噴射,該技術能迅速加熱并加速金屬或陶瓷顆粒,從而形成高性能涂層。然而,優化涂層質量仍是一個復雜的挑戰,因為其微觀結構受到顆粒飛行行為、噴涂參數和基體條件的顯著影響。本研究旨在從理論上探討顆粒飛行動態與涂層性能之間的關系,以實現對涂層微觀結構的精確控制。這篇綜述總結了顆粒在飛行過程中的加速、加熱、擴散和凝固行為,以及在與基體碰撞后的行為。通過采用粒子診斷技術和多物理場模擬,定量分析了諸如噴槍電流、氣體流量和噴射距離等噴涂參數對顆粒速度、溫度和形態的影響。此外,還深入探討了粒子飛行特性(如雷諾數和韋伯數)、擴散行為以及調節涂層微觀結構的界面傳熱機制之間的內在關系。文中還強調了機器學習和深度遷移學習技術在等離子噴涂中的應用。研究進展表明,精確控制粒子飛行的溫度和速度對于提高涂層的結合強度和密度至關重要。此外,精確調控的噴涂參數能夠顯著減少諸如孔隙和微裂紋等缺陷。本綜述不僅加深了對粒子飛行行為和涂層形成機制的理解,還為先進陶瓷涂層系統的開發提供了理論指導和技術策略。

     

    Abstract: Plasma spraying technology has gained widespread application in industrial fields due to its high efficiency and versatility. By utilizing ultra-high temperatures and high-speed jets, this technique rapidly heats and accelerates metal or ceramic particles to form high-performance coatings. However, optimizing coating quality remains a complex challenge, as its microstructure is significantly influenced by particle flight behavior, spraying parameters, and substrate conditions. This study aims to provide theoretical insights into the relationship between particle flight dynamics and coating performance, facilitating the precise control of coating microstructures. This review summarizes the acceleration, heating, spreading, and solidification behaviors of particles during flight and upon substrate impact. Employing particle diagnostic techniques and multiphysics simulations, it quantitatively analyzes the effects of spraying parameters-such as torch current, gas flow rate, and spraying distance—on particle velocity, temperature, and morphology. Additionally, the intrinsic relationships between particle flight characteristics (e.g., Reynolds and Weber numbers), spreading behavior, and interfacial heat transfer mechanisms regulating coating microstructures are thoroughly discussed. The application of machine learning and deep transfer learning techniques in plasma spraying is also highlighted. Advancements demonstrate that precise control of particle flight temperature and velocity is crucial for enhancing coating bonding strength and density. Moreover, the thoughtful design of spraying parameters can significantly reduce defects such as porosity and microcracks. This review not only deepens the understanding of particle flight behavior and coating formation mechanisms but also offers theoretical guidance and technical strategies for the development of advanced ceramic coating systems. Future studies should focus on deconstructing the relationship between particle melting states, splashing behavior, and coating performance. High-precision simulations of droplet solidification in dynamic environments could uncover additional mechanisms. Future research should fully consider real-world experimental conditions in simulations and establish more realistic multiphysics models. By utilizing high-time-resolution experimental techniques, dynamic data can be used to calibrate and optimize simulations. Expanding experimental parameters to include more spraying conditions will strengthen simulation validation. Real-time monitoring technologies can be used to feed experimental data directly into models, facilitating the development of adaptive, real-time simulation tools. Systematic sensitivity analyses should identify the main factors driving discrepancies between experimental and simulation results, and a comprehensive workflow from experimentation to simulation and process optimization should be developed to provide clear industrial guidelines.

     

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