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Sanitized Grey Wolf Optimizer(SGWO)-Support Vector Regressor (SVR)
Collection of notebooks for time series analysis
Implementation of Electric Load Forecasting Based on LSTM(BiLSTM). Including Univariate-SingleStep forecasting, Multivariate-SingleStep forecasting and Multivariate-MultiStep forecasting.
An attention-based BiLSTM for emotion classification.
Short-Term Aggregated Residential Load Forecasting using BiLSTM and CNN-BiLSTM
Performed comparative analysis of BiLSTM, CNN-BiLSTM and CNN-BiLSTM with attention models for forecasting cases.
TCN(Temporal Convolutional Network) model for load forecasting with serial data.
MFTCN: A Multi-Frequency Temporal Convolutional Network for Short-Term Temperature Prediction
Neuromorphic Project : Pattern Classification using Cuckoo Search Algorithm and Levy Flight Model
LucXiong / TSP_collection
Forked from kellenf/TSP_collectionTSP算法全复现:遗传(GA)、粒子群(PSO)、模拟退火(SA)、禁忌搜索(ST)、蚁群算法(ACO)、自自组织神经网络(SOM)
种群算法复现(swarm-algorithm),包括乌鸦搜索(Crow Search Algorithm, CSA)、樽海鞘群算法(Salp Swarm Algorithm, SSA)、缎蓝园丁鸟优化算法(Satin Bowerbird Optimizer, SBO)、麻雀搜索算法(Sparrow Search Algorithm, SSA)、 狼群搜索算法(2007WPS, 2013WPA…
肖子雅, 刘升. 精英反向黄金正弦鲸鱼算法及其工程优化研究[J]. 电子学报, 2019, 47(10): 2177-2186.
LSTM neural network realizes the prediction of wind speed through the learning of various parameters. It can provide important support for the smooth operation of power system and the optimization …
Wind power output forecast
LSTM model for forecasting wind-power generation
Wind Power forecasting for the day-ahead energy market - Data Challenge
该项目为多个小项目的集合(持续更新中...)。内容类似淘宝、京东等网购管理系统以及图书管理、超市管理等系统。目的在于便于Java初级爱好者在学习完某一部分Java知识后有一个合适的项目锻炼、运用所学知识,完善知识体系。适用人群:Java基础到入门的爱好者。
技术栈 Spring MVC+ Mybatis + Spring + Jsp + Tomcat , 是 Java Web 入门非常好的练手项目
一个基于JavaWeb的网上电子购物城项目,实现展示商品、购买商品、提交订单、持久化保存到数据库等基本功能
🏫🎓 一个基于 SSM 的简单学生管理系统,项目概述全面,代码注释详细,逻辑结构清晰,对于初学 SSM 的同学非常具有参考与学习价值哟 !