389 research outputs found
Solar PV power forecasting at Yarmouk University using machine learning techniques
Renewable energy sources are considered ubiquitous
and drive the energy revolution. Energy producers
suffer from inconsistent electricity generation. They
often struggled with the unpredictability of the weather.
Thus, making it challenging to balance supply and demand.
Technologies like artificial intelligence (AI) and machine
learning are effective ways to forecast, distribute, andmanage
renewable photovoltaic (PV) solar supplies. AI will make the
energy forecasting system more connected, intelligent, reliable,
and sustainable. AI can innovate how energy is used
and help find solutions for decarbonizing energy systems.
There are potential advantages to total energy forecasting.
AI can support the growth and integration of PV solar energy.
The article’s main objective is to use AI to forecast the output
consumed power of the Yarmouk University PV solar system
in Jordan. The total actual yield is 5548.96 MW h, and the
performance ratio (PR) is 95.73%. Many techniques are used
to predict the consumed solar power. The random forest
model obtains the best results of root mean squared error
and mean absolute error are 172.07 and 68.7, respectively.
This accurate prediction allows for the maximum use of
solar power and the minimal use of grid power. This work
guides the operators to learn trends embedded in Yarmouk
University’s historical data. These understood trends can
be used to predict the consumption of solar power output.
Thus, the control system and grid operators have advanced
knowledge of the expected consumption of solar power at
each hour of the day
Swarm intelligence-based model for improving prediction performance of low-expectation teams in educational software engineering projects
Software engineering is one of the most significant areas, which extensively used in
educational and industrial fields. Software engineering education plays an essential
role in keeping students up to date with software technologies, products, and processes
that are commonly applied in the software industry. The software development project
is one of the most important parts of the software engineering course, because it covers
the practical side of the course. This type of project helps strengthening students' skills
to collaborate in a team spirit to work on software projects. Software project involves the
composition of software product and process parts. Software product part represents
software deliverables at each phase of Software Development Life Cycle (SDLC)
while software process part captures team activities and behaviors during SDLC. The
low-expectation teams face challenges during different stages of software project.
Consequently, predicting performance of such teams is one of the most important
tasks for learning process in software engineering education. The early prediction of
performance for low-expectation teams would help instructors to address difficulties
and challenges related to such teams at earliest possible phases of software project
to avoid project failure. Several studies attempted to early predict the performance
for low-expectation teams at different phases of SDLC. This study introduces swarm
intelligence -based model which essentially aims to improve the prediction performance
for low-expectation teams at earliest possible phases of SDLC by implementing Particle
Swarm Optimization-K Nearest Neighbours (PSO-KNN), and it attempts to reduce the
number of selected software product and process features to reach higher accuracy with
identifying less than 40 relevant features. Experiments were conducted on the Software
Engineering Team Assessment and Prediction (SETAP) project dataset. The proposed
model was compared with the related studies and the state-of-the-art Machine Learning
(ML) classifiers: Sequential Minimal Optimization (SMO), Simple Linear Regression
(SLR), Naïve Bayes (NB), Multilayer Perceptron (MLP), standard KNN, and J48. The
proposed model provides superior results compared to the traditional ML classifiers
and state-of-the-art studies in the investigated phases of software product and process
development
Empirical Testing Of Different Alternative Proxy Measures For Firm Size
This paper examines the relationship among total sales revenue, total assets, book value of equity, and market value of equity for different economic sectors and timeperiods. Five statistical tools are used to examine the relationship among the different proxies of size of the firm for the period 1999-2002. Our study shows that the relationships among the four measures of the size of the firm are not the same for the different economic sectors and are not stable over time for each economic sector. Our results suggest that the use of the four measures interchangeably as a proxy for the firm size may not be appropriate
Effects of sewage sludge on heavy metal accumulation in soil and plants and on crop productivity in Aleppo governorate
Sewage sludgeHeavy metalsCrop productionCropsOrganic matterSoil
Deep neural networks in the cloud: Review, applications, challenges and research directions
Deep neural networks (DNNs) are currently being deployed as machine learning technology in a wide
range of important real-world applications. DNNs consist of a huge number of parameters that require
millions of floating-point operations (FLOPs) to be executed both in learning and prediction modes. A
more effective method is to implement DNNs in a cloud computing system equipped with centralized
servers and data storage sub-systems with high-speed and high-performance computing capabilities.
This paper presents an up-to-date survey on current state-of-the-art deployed DNNs for cloud computing.
Various DNN complexities associated with different architectures are presented and discussed alongside
the necessities of using cloud computing. We also present an extensive overview of different cloud
computing platforms for the deployment of DNNs and discuss them in detail. Moreover, DNN applications
already deployed in cloud computing systems are reviewed to demonstrate the advantages of using
cloud computing for DNNs. The paper emphasizes the challenges of deploying DNNs in cloud computing
systems and provides guidance on enhancing current and new deployments.The EGIA project (KK-2022/00119The
Consolidated Research Group MATHMODE (IT1456-22
Sentiment Analysis of Customers' Reviews Using a Hybrid Evolutionary SVM-Based Approach in an Imbalanced Data Distribution
Online media has an increasing presence on the restaurants' activities through social media
websites, coinciding with an increase in customers' reviews of these restaurants. These reviews become
the main source of information for both customers and decision-makers in this field. Any customer who
is seeking such places will check their reviews first, which usually affect their final choice. In addition,
customers' experiences can be enhanced by utilizing other customers' suggestions. Consequently, customers'
reviews can influence the success of restaurant business since it is considered the final judgment of the overall
quality of any restaurant. Thus, decision-makers need to analyze their customers' underlying sentiments in
order to meet their expectations and improve the restaurants' services, in terms of food quality, ambiance,
price range, and customer service. The number of reviews available for various products and services
has dramatically increased these days and so has the need for automated methods to collect and analyze
these reviews. Sentiment Analysis (SA) is a field of machine learning that helps analyze and predict the
sentiments underlying these reviews. Usually, SA for customers' reviews face imbalanced datasets challenge,
as the majority of these sentiments fall into supporters or resistors of the product or service. This work
proposes a hybrid approach by combining the SupportVector Machine (SVM) algorithm with Particle Swarm
Optimization (PSO) and different oversampling techniques to handle the imbalanced data problem. SVM is
applied as a machine learning classi cation technique to predict the sentiments of reviews by optimizing the
dataset, which contains different reviews of several restaurants in Jordan. Data were collected from Jeeran,
a well-known social network for Arabic reviews. A PSO technique is used to optimize the weights of the
features, as well as four different oversampling techniques, namely, the Synthetic Minority Oversampling
Technique (SMOTE), SVM-SMOTE, Adaptive Synthetic Sampling (ADASYN) and borderline-SMOTE
were examined to produce an optimized dataset and solve the imbalanced problem of the dataset. This study
shows that the proposed PSO-SVM approach produces the best results compared to different classiffication
techniques in terms of accuracy, F-measure, G-mean and Area Under the Curve (AUC), for different versions
of the datasets
A Multilingual Spam Reviews Detection Based on Pre-Trained Word Embedding and Weighted Swarm Support Vector Machines
Online reviews are important information that customers seek when deciding to buy products or
services. Also, organizations benefit from these reviews as essential feedback for their products or services.
Such information required reliability, especially during the Covid-19 pandemic which showed a massive
increase in online reviews due to quarantine and sitting at home. Not only the number of reviews was boosted
but also the context and preferences during the pandemic. Therefore, spam reviewers reflect on these changes
and improve their deception technique. Spam reviews usually consist of misleading, fake, or fraudulent
reviews that tend to deceive customers for the purpose of making money or causing harm to other competitors.
Hence, this work presents a Weighted Support Vector Machine (WSVM) and Harris Hawks Optimization
(HHO) for spam review detection. The HHO works as an algorithm for optimizing hyperparameters and
feature weighting. Three different language corpora have been used as datasets, namely English, Spanish, and
Arabic in order to solve the multilingual problem in spam reviews. Moreover, pre-trained word embedding
(BERT) has been applied alongside three-word representation methods (NGram-3, TFIDF, and One-hot
encoding). Four experiments have been conducted, each focused on solving and demonstrating different
aspects. In all experiments, the proposed approach showed excellent results compared with other state-ofthe-
art algorithms. In other words, the WSVM-HHO achieved an accuracy of 88.163%, 71.913%, 89.565%,
and 84.270%, for English, Spanish, Arabic, and Multilingual datasets, respectively. Further, a deep analysis
has been conducted to investigate the context of reviews before and after the COVID-19 situation. In addition,
it has been generated to create a new dataset with statistical features and merge its previous textual features
for improving detection performance.Projects TED2021-129938B-I0,PID2020-113462RB-I00, PDC2022-133900-I00PID2020-115570GB-C22, granted by Ministerio Español de Ciencia e InnovaciónMCIN/AEI/10.13039/501100011033MCIN/AEI/10.13039/501100011033MCIN/AEINext GenerationEU/PRT
Sentiment Analysis for e-Payment Service Providers Using Evolutionary eXtreme Gradient Boosting
Online services depend primarily on customer feedback and communications. When this
kind of input is lacking, the overall approach of the service provider can shift in unintended ways. These
services rely on feedback to maintain consumer satisfaction. Online social networks are a rich source
of consumer data related to services and products. Well developed methods like sentiment analysis can
offer insightful analyses and aid service providers in predicting outcomes based on their reviews—which,
in turn, enables decision-makers to develop effective strategic plans. However, gathering this data is
more challenging on Arabic online social networks, due to the complexity of the Arabic language and
its dialects. In this study, we propose an approach to sentiment analysis that combines a neutrality
detector model with eXtreme Gradient Boosting and a genetic algorithm to effectively predict and analyze
customers’ opinions of an e-Payment service through an Arabic social network. The proposed approach
yields excellent results compared to other approaches. Feature analysis is also conducted on consumer
reviews to identify influencing keywords.Deanship of Scientific Research, The University of JordanMinisterio espanol de Economia y Competitividad
TIN2017-85727-C4-2-
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