基于仿生计算和人类语音感知的智能饮水机声音愉悦度监测P-FLANN模型设计

Barnali Brahma, T. Dash, G. Panda, L. V. N. Prasad, R. Kulkarni
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引用次数: 0

摘要

认知启发的计算系统在设计智能健康监测系统中起着至关重要的作用,这对患者和医院都有帮助。它还有助于对包括人类心理健康在内的各种健康问题作出早期和一致的决策。建在公园和公共场所的饮水机被用作装饰工具,不仅具有吸引人的视觉效果,而且为游客提供了一个放松的环境。这些自然的声音对游客的心理健康有直接的影响。关于水声与其相应的心理影响之间关系的研究工作报道很少。这种评估需要训练有素的人力和大量的实验时间,这是昂贵的,可能并不总是可用的。为了从愉悦度上获取对人体健康有益的饮水机声音,建立了感知加权功能链接人工神经网络(P-FLANN)模型。为了降低训练的计算复杂度和加快收敛速度,采用基于游动智能的优化算法更新权值。对比仿真结果表明,所提出的P-FLANN模型能够有效地完成预测任务,不仅具有成本效益,而且准确率高达95%,可以在智慧城市中设计人体健康的饮水机中发挥至关重要的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of P-FLANN Model for Intelligent Water Fountain Sound Pleasantness Monitoring Using Bio-inspired Computing and Human Speech Perception
Cognitive-inspired Computational Computing systems play a crucial role in designing intelligent health monitoring systems which help both patients and hospitals. It also helps in early and consistent decision-making for various health issues including human psychological health. Water fountains built in parks and public spaces are used as decorative instruments which not only give appealing visuals but also it provides a relaxing environment to the visitors. These natural sounds have a direct effect on the psychological health of visitors. Very few research works are reported on developing the relationship between water sounds and their corresponding psychological impact. This assessment needs trained manpower and a lot of experimental time which is costly and may not be always available. In this paper to access the human health-friendly water fountain sounds from the pleasantness, a Perceptually Weighted functional link artificial neural network (P-FLANN) model is developed. To reduce the computational complexity of training and for faster convergence, swam intelligence-based optimization algorithm is used for updating the weights. It is observed from the comparative simulation results that the proposed P-FLANN model can effectively perform prediction tasks which is not only cost-effective but also 95% accurate and can play a crucial role in designing human health-friendly water fountains in smart cities.
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