利用粒子群优化-长短期记忆-并发神经网络混合模型优化智慧城市的空气质量预测

IF 2.1 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Surjeet Dalal, Umesh Kumar Lilhore, Neetu Faujdar, Sarita Samiya, Vivek Jaglan, Roobaea Alroobaea, Momina Shaheen, Faizan Ahmad
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引用次数: 0

摘要

在智慧城市中,空气污染是影响个人健康和危害环境的关键问题。空气污染预测可为相关各方提供重要信息,以便采取适当措施。空气质量预测是一个热门研究领域。现有的研究遇到了几个挑战,即准确性差和实时更新不正确。本研究提出了一种基于长短期记忆(LSTM)、循环神经网络(RNN)和好奇心激励法的混合模型。所提出的模型使用 RNN 层从训练数据集中提取特征集,并通过应用 LSTM 层实现排序学习。此外,为了解决 LSTM 中的过拟合问题,提出的模型采用了 dropout 策略。在所提出的模型中,输入和递归连接可以利用舍弃正则化方法从激活和权重更新中舍弃,并利用基于好奇心的动机模型构建新颖的动机模型,从而帮助重建长短期记忆递归神经网络。为了使预测误差最小化,采用了粒子群优化法来优化 LSTM 神经网络的权重。作者利用美国盐湖城的在线空气污染监测数据集和五个空气质量指标(即二氧化硫、一氧化碳、臭氧和二氧化氮)进行比较,以预测空气质量。提出的模型与现有的梯度提升树回归、现有的 LSTM 和基于支持向量机的回归模型进行了比较。实验分析表明,拟议方法的均方根误差(RMSE)为 0.0184,平均绝对误差为 0.0082,平均绝对百分比误差为 2002*109,R2 分数为 0.122。实验结果表明,拟议的 LSTM 模型在规定的数据集中具有 RMSE 性能,与现有方法相比,在统计上具有显著优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Optimising air quality prediction in smart cities with hybrid particle swarm optimization-long-short term memory-recurrent neural network model

Optimising air quality prediction in smart cities with hybrid particle swarm optimization-long-short term memory-recurrent neural network model

In smart cities, air pollution is a critical issue that affects individual health and harms the environment. The air pollution prediction can supply important information to all relevant parties to take appropriate initiatives. Air quality prediction is a hot area of research. The existing research encounters several challenges that is, poor accuracy and incorrect real-time updates. This research presents a hybrid model based on long-short term memory (LSTM), recurrent neural network (RNN), and Curiosity-based Motivation method. The proposed model extracts a feature set from the training dataset using an RNN layer and achieves sequencing learning by applying an LSTM layer. Also, to deal with the overfitting issues in LSTM, the proposed model utilises a dropout strategy. In the proposed model, input and recurrent connections can be dropped from activation and weight updates using the dropout regularisation approach, and it utilises a Curiosity-based Motivation model to construct a novel motivational model, which helps in the reconstruction of long short-term memory recurrent neural network. To minimise the prediction error, particle swarm optimisation is implemented to optimise the LSTM neural network's weights. The authors utilise an online Air Pollution Monitoring dataset from Salt Lake City, USA with five air quality indicators for comparison, that is, SO2, CO, O3, and NO2, to predict air quality. The proposed model is compared with existing Gradient Boosted Tree Regression, Existing LSTM, and Support Vector Machine based Regression Model. Experimental analysis shows that the proposed method has 0.0184 (Root Mean Square Error (RMSE)), 0.0082 (Mean Absolute Error), 2002*109 (Mean Absolute Percentage Error), and 0.122 (R2-Score). The experimental findings demonstrate that the proposed LSTM model had RMSE performance in the prescribed dataset and statistically significant superior outcomes compared to existing methods.

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来源期刊
IET Smart Cities
IET Smart Cities Social Sciences-Urban Studies
CiteScore
7.70
自引率
3.20%
发文量
25
审稿时长
21 weeks
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