搜索到245663篇“ PREDICTION“的相关文章
短路电流预测方法综述
2024年
随着用电负荷与新型电力系统容量的不断增大,短路保护如何与之适配的技术难题日渐突出。系统发生短路故障时,可对短路电流发展进行预测,并根据该规律制定最佳保护与控制方案,力求安全前提下,使得短路造成的停电范围、设施损害最小。因此,短路电流预测方法被广泛研究。首先对短路电流进行了数学分析,得出其主要特征与影响因素;其次,以不同短路电流预测应用场景为分类依据,将国内外主要相关贡献归纳为节点预测、零点预测和峰值预测共三种研究类型,并总结了各类型预测方法的优缺点;最后,对短路电流预测方法进一步的研究方向和趋势进行了展望。
李嘉敏庄胜斌杨广辉唐玲玲
西南某机场跑道沉降预测模型
2024年
机场道面沉降,严重影响机场安全运行。准确预测跑道工后沉降,对机场的建设与运行极为重要。以西南某机场跑道沉降变形的观测数据为依据,分别用双曲线模型、对数模型、指数模型以及灰色预测模型,对跑道沉降进行预测和对比分析,解决了小样本数下曲线预测精度较低及灰色模型对非线性预测准确度差等问题,提高了预测的精度;同时通过BP神经网络对组合预测模型的残差进行修正,最大限度地提高模型预测的精度和效果,为地基沉降预测提供借鉴。
方学东顾天宇舒富民
关键词:沉降预测BP神经网络
Prediction of Wordle Scores Based on ARIMA and LSTM Models
2024年
This paper examines the effectiveness of the Differential autoregressive integrated moving average (ARIMA) model in comparison to the Long Short Term Memory (LSTM) neural network model for predicting Wordle user-reported scores. The ARIMA and LSTM models were trained using Wordle data from Twitter between 7th January 2022 and 31st December 2022. User-reported scores were predicted using evaluation metrics such as MSE, RMSE, R2, and MAE. Various regression models, including XG-Boost and Random Forest, were used to conduct comparison experiments. The MSE, RMSE, R2, and MAE values for the ARIMA(0,1,1) and LSTM models are 0.000, 0.010, 0.998, and 0.006, and 0.000, 0.024, 0.987, and 0.013, respectively. The results indicate that the ARIMA model is more suitable for predicting Wordle user scores than the LSTM model.
Biyun ChenWenqiang Li
关键词:ARIMAPREDICTION
Application of Machine Learning for Flood Prediction and Evaluation in Southern Nigeria
2024年
This study explored the application of machine learning techniques for flood prediction and analysis in southern Nigeria. Machine learning is an artificial intelligence technique that uses computer-based instructions to analyze and transform data into useful information to enable systems to make predictions. Traditional methods of flood prediction and analysis often fall short of providing accurate and timely information for effective disaster management. More so, numerical forecasting of flood disasters in the 19th century is not very accurate due to its inability to simplify complex atmospheric dynamics into simple equations. Here, we used Machine learning (ML) techniques including Random Forest (RF), Logistic Regression (LR), Naïve Bayes (NB), Support Vector Machine (SVM), and Neural Networks (NN) to model the complex physical processes that cause floods. The dataset contains 59 cases with the goal feature “Event-Type”, including 39 cases of floods and 20 cases of flood/rainstorms. Based on comparison of assessment metrics from models created using historical records, the result shows that NB performed better than all other techniques, followed by RF. The developed model can be used to predict the frequency of flood incidents. The majority of flood scenarios demonstrate that the event poses a significant risk to people’s lives. Therefore, each of the emergency response elements requires adequate knowledge of the flood incidences, continuous early warning service and accurate prediction model. This study can expand knowledge and research on flood predictive modeling in vulnerable areas to inform effective and sustainable contingency planning, policy, and management actions on flood disaster incidents, especially in other technologically underdeveloped settings.
Emeka Bright OgbueneChukwumeuche Ambrose EzeObianuju Getrude AlohAndrew Monday OrokeDamian Onuora UdegbunamJosiah Chukwuemeka OgbukaFred Emeka AchoruVivian Amarachi OzormeObianuju AnwaraIkechukwu ChukwunonyelumAnthonia Nneka NeboObiageli Jacinta Okolo
关键词:FLOODPREDICTIONEVALUATION
Prediction of Lung Cancer Stage Using Tumor Gene Expression Data
2024年
Lung cancer remains a significant global health challenge and identifying lung cancer at an early stage is essential for enhancing patient outcomes. The study focuses on developing and optimizing gene expression-based models for classifying cancer types using machine learning techniques. By applying Log2 normalization to gene expression data and conducting Wilcoxon rank sum tests, the researchers employed various classifiers and Incremental Feature Selection (IFS) strategies. The study culminated in two optimized models using the XGBoost classifier, comprising 10 and 74 genes respectively. The 10-gene model, due to its simplicity, is proposed for easier clinical implementation, whereas the 74-gene model exhibited superior performance in terms of Specificity, AUC (Area Under the Curve), and Precision. These models were evaluated based on their sensitivity, AUC, and specificity, aiming to achieve high sensitivity and AUC while maintaining reasonable specificity.
Yadi Gu
An Initial Perturbation Method for the Multiscale Singular Vector in Global Ensemble Prediction
2024年
Ensemble prediction is widely used to represent the uncertainty of single deterministic Numerical Weather Prediction(NWP) caused by errors in initial conditions(ICs). The traditional Singular Vector(SV) initial perturbation method tends only to capture synoptic scale initial uncertainty rather than mesoscale uncertainty in global ensemble prediction. To address this issue, a multiscale SV initial perturbation method based on the China Meteorological Administration Global Ensemble Prediction System(CMA-GEPS) is proposed to quantify multiscale initial uncertainty. The multiscale SV initial perturbation approach entails calculating multiscale SVs at different resolutions with multiple linearized physical processes to capture fast-growing perturbations from mesoscale to synoptic scale in target areas and combining these SVs by using a Gaussian sampling method with amplitude coefficients to generate initial perturbations. Following that, the energy norm,energy spectrum, and structure of multiscale SVs and their impact on GEPS are analyzed based on a batch experiment in different seasons. The results show that the multiscale SV initial perturbations can possess more energy and capture more mesoscale uncertainties than the traditional single-SV method. Meanwhile, multiscale SV initial perturbations can reflect the strongest dynamical instability in target areas. Their performances in global ensemble prediction when compared to single-scale SVs are shown to(i) improve the relationship between the ensemble spread and the root-mean-square error and(ii) provide a better probability forecast skill for atmospheric circulation during the late forecast period and for short-to medium-range precipitation. This study provides scientific evidence and application foundations for the design and development of a multiscale SV initial perturbation method for the GEPS.
Xin LIUJing CHENYongzhu LIUZhenhua HUOZhizhen XUFajing CHENJing WANGYanan MAYumeng HAN
Hybrid 1DCNN-Attention with Enhanced Data Preprocessing for Loan Approval Prediction
2024年
In order to reduce the risk of non-performing loans, losses, and improve the loan approval efficiency, it is necessary to establish an intelligent loan risk and approval prediction system. A hybrid deep learning model with 1DCNN-attention network and the enhanced preprocessing techniques is proposed for loan approval prediction. Our proposed model consists of the enhanced data preprocessing and stacking of multiple hybrid modules. Initially, the enhanced data preprocessing techniques using a combination of methods such as standardization, SMOTE oversampling, feature construction, recursive feature elimination (RFE), information value (IV) and principal component analysis (PCA), which not only eliminates the effects of data jitter and non-equilibrium, but also removes redundant features while improving the representation of features. Subsequently, a hybrid module that combines a 1DCNN with an attention mechanism is proposed to extract local and global spatio-temporal features. Finally, the comprehensive experiments conducted validate that the proposed model surpasses state-of-the-art baseline models across various performance metrics, including accuracy, precision, recall, F1 score, and AUC. Our proposed model helps to automate the loan approval process and provides scientific guidance to financial institutions for loan risk control.
Yaru LiuHuifang Feng
Study Progress Analysis of Effluent Quality Prediction in Activated Sludge Process Based on CiteSpace
2024年
In this paper, CiteSpace, a bibliometrics software, was adopted to collect research papers published on the Web of Science, which are relevant to biological model and effluent quality prediction in activated sludge process in the wastewater treatment. By the way of trend map, keyword knowledge map, and co-cited knowledge map, specific visualization analysis and identification of the authors, institutions and regions were concluded. Furthermore, the topics and hotspots of water quality prediction in activated sludge process through the literature-co-citation-based cluster analysis and literature citation burst analysis were also determined, which not only reflected the historical evolution progress to a certain extent, but also provided the direction and insight of the knowledge structure of water quality prediction and activated sludge process for future research.
Kemeng Xue
关键词:CITESPACE
Choice of the Best Production Prediction Model for the Zagtouli Solar Power Plant in Burkina-Faso
2024年
In this paper, we present a study on the prediction of the power produced by the 33 MWp photovoltaic power plant at Zagtouli in Burkina-Faso, as a function of climatic factors. We identified models in the literature, namely the Benchmark, input/output, Marion, Cristo-fri, Kroposki, Jones-Underwood and Hatziargyriou prediction models, which depend exclusively on environmental parameters. We then compared our linear model with these seven mathematical models in order to determine the most optimal prediction model. Our results show that the Hatziargyriou model is better in terms of accuracy for power prediction.
Toussaint Tilado GuinganeEric KorsagaMouhamadou Falilou NdiayeGaston NabayaogoDominique BonkoungouZacharie Koalaga
关键词:MODELPREDICTIONPOWERPHOTOVOLTAIC
The Formation of Oscillation Patterns Based on the Planetary Gravitational Field and Their Suitability for Earthquake Prediction
2024年
The fluctuating planetary gravitational field influences not only activities on the Sun but also on the Earth. A special correlation function describes the harmonics of these fluctuations. Groups of earthquakes form oscillation patterns that differ significantly from randomly chosen control groups. These patterns are suitable as an element of an AI for the probability of earthquakes.
Michael E. Nitsche

相关作者

史秀志
作品数:304被引量:1,799H指数:21
供职机构:中南大学资源与安全工程学院
研究主题:爆破振动 爆破 数值模拟 采场 爆破参数
姚冬生
作品数:184被引量:302H指数:9
供职机构:暨南大学
研究主题:黄曲霉毒素 电化学生物传感器 抗性 核酸适配体 野生型
刘大岭
作品数:145被引量:213H指数:8
供职机构:暨南大学
研究主题:黄曲霉毒素 电化学生物传感器 抗性 黄曲霉毒素解毒酶 Β-甘露聚糖酶
谢春芳
作品数:113被引量:184H指数:8
供职机构:暨南大学
研究主题:电化学生物传感器 黄曲霉毒素 抗性 黄曲霉毒素解毒酶 胰蛋白酶
周健
作品数:963被引量:6,744H指数:40
供职机构:中南大学
研究主题:颗粒流 砂土 数值模拟 模型试验 地基处理