基于应用的软计算方法审查,通过专利态势分析加强工业实践

S. Tamilselvan, G. Dhanalakshmi, D. Balaji, L. Rajeshkumar
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引用次数: 0

摘要

软计算是一种涉及所有工程和技术领域的集体方法,因为与传统方法相比,它易于解决各种问题。许多分析方法都被这种软计算技术所取代,并得到了准确的解决。软计算的灵活性使得知识获取处理和信息供应变得非常迅速,从而形成了功能多样、经济实惠的技术系统。此外,软计算技术预测参数的准确性将工业生产力提升到了一个全新的水平。本文关注的重点是软计算方法在预测技术变革方面的广泛应用,这些技术变革意在调整各行各业的发展方向。专利格局揭示了该细分市场的持续参与者,这也提供了该领域未来的发展方向,以及谁可能成为特定技术的主导国家。此外,文章还提到了软计算方法在特定实践中的准确性,表明了该技术的可行性。这篇文章的新颖之处在于与其他数据相比的专利格局分析,而另一部分则是讨论计算技术在各种工业实践中的应用。为了更好地了解所有这些应用的未来,提高生产率,必须将各种工程应用的进展与专利状况分析结合起来。
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Application‐Based Review of Soft Computational Methods to Enhance Industrial Practices Abetted by the Patent Landscape Analysis
Soft computing is a collective methodology that touches all engineering and technology fields owing to its easiness in solving various problems while comparing the conventional methods. Many analytical methods are taken over by this soft computing technique and resolve it accurately and the soft computing has given a paradigm shift. The flexibility in soft computing results in swift knowledge acquisition processing and the information supply renders versatile and affordable technological system. Besides, the accuracy with which the soft computing technique predicts the parameters has transformed the industrial productivity to a whole new level. The interest of this article focuses on versatile applications of SC methods to forecast the technological changes which intend to reorient the progress of various industries, and this is ascertained by a patent landscape analysis. The patent landscape revealed the players who are in the segment consistently and this also provides how this field moves on in the future and who could be a dominant country for a specific technology. Alongside, the accuracy of the soft computing method for a particular practice has also been mentioned indicating the feasibility of the technique. The novel part of this article lies in patent landscape analysis compared with the other data while the other part is the discussion of application of computational techniques to various industrial practices. The progress of various engineering applications integrating them with the patent landscape analysis must be envisaged for a better understanding of the future of all these applications resulting in an improved productivity.
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