Research on parameter extraction of thin-film transistors based on swarm intelligence

IF 1.7 4区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Journal of the Society for Information Display Pub Date : 2023-05-07 DOI:10.1002/jsid.1224
Peng Liu, Bailing Liu, Jing Feng, Zhichong Wang, Qian Zhang, Xiaojun Tang, Yang Li, Guangcai Yuan, Xue Dong
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Abstract

The development of integrated circuits for displays and other applications requires semiconductor device models and appropriate parameter extraction techniques to predict and understand the circuit behavior. These techniques are paramount in reducing design errors and shortening the product development cycle. This paper presents an algorithm that employed swarm intelligence in exploring an automated and accurate parameter extraction technology. First, an automatic parameter extraction of Rensselaer Polytechnic Institute (RPI) Model for polysilicon thin-film transistor (Poly-Si TFT) is achieved by genetic algorithm (GA) and particle swarm optimization (PSO) algorithm. Compared with the best solution of the GA algorithm for automatic parameter extraction, the PSO outperformed the GA. However, it still prematurely converges to the suboptimal solution henceforth cannot obtain the expected solution accuracy. Second, the mutual learning particle swarm optimization (MLPSO) algorithm is proposed that introduces the concept of “mutual learning.” The new algorithm aims to find the global optimum in getting suitable trade-off between exploration and exploitation. In addition, the MLPSO algorithm implemented the novel random initialization and fitness function in simplifying the complex manual processes and the empirical calibration, and it led to achieving automatic and accurate parameters extraction.

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基于群体智能的薄膜晶体管参数提取研究
用于显示器和其他应用的集成电路的开发需要半导体器件模型和适当的参数提取技术来预测和理解电路行为。这些技术对于减少设计错误和缩短产品开发周期至关重要。本文提出了一种利用群体智能的算法来探索一种自动准确的参数提取技术。首先,利用遗传算法(GA)和粒子群优化算法(PSO)实现了伦斯勒理工学院(RPI)多晶硅薄膜晶体管(Poly-Si-TFT)模型的参数自动提取。与遗传算法自动参数提取的最佳解相比,粒子群算法的性能优于遗传算法。然而,它仍然过早地收敛到次优解,因此无法获得预期的解精度。其次,提出了引入“相互学习”概念的相互学习粒子群优化(MLPSO)算法。新算法旨在找到在勘探和开发之间取得适当平衡的全局最优值。此外,MLPSO算法实现了新的随机初始化和适应度函数,简化了复杂的手动过程和经验校准,实现了参数的自动准确提取。
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来源期刊
Journal of the Society for Information Display
Journal of the Society for Information Display 工程技术-材料科学:综合
CiteScore
4.80
自引率
8.70%
发文量
98
审稿时长
3 months
期刊介绍: The Journal of the Society for Information Display publishes original works dealing with the theory and practice of information display. Coverage includes materials, devices and systems; the underlying chemistry, physics, physiology and psychology; measurement techniques, manufacturing technologies; and all aspects of the interaction between equipment and its users. Review articles are also published in all of these areas. Occasional special issues or sections consist of collections of papers on specific topical areas or collections of full length papers based in part on oral or poster presentations given at SID sponsored conferences.
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