Energy Consumption Forecasting Using Ensemble Machine Learning Models in Smart GridAccurately predicting medical charges is crucial for healthcare providers, insurance companies, and policymakers to manage costs and allocate resources efficiently. This study conducts a comparative analysis of five machine learning algorithms—Linear Regression, Decision Tree Regressor, Random Forest Regressor, XGBoost Regressor, and Gradient Boosting Regressor—to evaluate their performance in predicting medical insurance charges. Utilizing a dataset of patient demographics, health indicators, and lifestyle factors, we identify the key variables that most significantly influence medical expenses. Our findings reveal that certain algorithms outperform others in predictive accuracy, with XGBoost Regressor showing the highest accuracy (R² = 0.94). Additionally, the study highlights the most critical factors contributing to medical charges, are Smoking status, BMI, and Age. The analysis of feature importance across different models provides valuable insights into the underlying drivers of healthcare costs. This research contributes to the growing body of literature on healthcare analytics by offering a dual focus on predictive modeling and variable importance. The results underscore the potential of machine learning to enhance decision-making in the healthcare industry, particularly in optimizing resource allocation and cost management.
Construction of a Regional Public Transportation Management Support System Using the Cloud
Public transportation is an indispensable part of residents’ daily lives, including commuting, shopping, and hospital visits. Our research group provides support activities for regional public transportation systems, mainly for community buses operated by local governments. The primary support services include the development of the General Transit Feed Specification (GTFS), bus location that displays the location of buses on a map, and the measurement of the number of passengers. We are supporting the DX of regional public transportation by constructing and providing an infrastructure system to realize these services. Until now, the infrastructure system was built on a server in a university laboratory to provide these services. However, the service was often interrupted due to power outages for legal inspections several times a year and network failures within the university, resulting in constant complaints from the regional public transportation operators they support. The conversion of the infrastructure system to the cloud solves these problems. A comparison of communication speeds showed that the on-premise environment was faster. However, by converting the infrastructure system to AWS, the security risk of converting their servers and the risk of power outages due to legal inspections can be reduced or eliminated, so these speed differences are considered acceptable.
Single-Stage PV-Grid Integrated Multilevel Inverter Driven Induction Motor Drive for Water Pumping
This paper presents an innovative single-stage grid-integrated solar photovoltaic (PV) system for water-pumping applications using an induction motor drive (IMD). The proposed system employs a seven-level diode-clamped multilevel inverter (MLI) to convert DC power from the PV array to AC power for the motor, eliminating the need for an intermediate DC-DC converter. A perturb and observe (P&O) algorithm is utilized for the PV array’s maximum power point tracking (MPPT). Direct torque control (DTC) with space vector modulation (SVM) provides precise speed regulation of the induction motor. The system enables bidirectional power flow between the PV array, motor load, and utility grid, optimizing energy utilization under varying irradiance and demand conditions. The proposed configuration exhibits enhanced efficiency and improved power quality compared to conventional two-stage topologies, offering a promising solution for grid-connected solar-powered water pumping systems.
Identifying Silent Mutations for the Introduction of Restriction Sites in Open Reading Frames
For many applications in molecular biology, restriction sites need to be engineered into an open reading frame (ORF), a part of the genetic material that codes for a protein. Importantly, silent mutations need to be performed because only these do not alter the amino acid sequence of the protein. However, finding such silent mutations is a very time-consuming process. We have developed a program which recognizes all silent mutations in an open reading frame (ORF) that each lead to a new restriction site. Our program uses python technologies comprising web crawlers and data analysis libraries to deduce the amino acid sequence coded by an ORF and convert the ORF nucleotide sequence into the amino acid single letter sequence. In doing so, reverse translation back into the nucleotide sequence allows the consideration of all possible nucleotide sequences coding for the same amino acid sequence, which are then compared with the restriction recognition sites of commercially available restriction enzymes, such as from New England Biolabs (e.g., https://www.neb.com/). This allows the identification of restriction sites that can be engineered via silent mutations within the provided DNA input sequences. The output is presented in a user-friendly tabular format that can be examined or downloaded (as a CSV file) for ongoing evaluations.
Next Level Chatbot: Expert Advisory Solution
The proposed research aims to enhance ticket creation efficiency by utilising a chatbot embedded with automation capabilities, allowing tickets to be completed without human intervention. This will significantly improve overall processing time and workflow from both a customer service and technical efficiency perspective.
Next Level Chatbot: Expert Advisory Solution
The proposed research aims to enhance ticket creation efficiency by utilising a chatbot embedded with automation capabilities, allowing tickets to be completed without human intervention. This will significantly improve overall processing time and workflow from both a customer service and technical efficiency perspective.
Next Level Chatbot: Expert Advisory Solution
The proposed research aims to enhance ticket creation efficiency by utilising a chatbot embedded with automation capabilities, allowing tickets to be completed without human intervention. This will significantly improve overall processing time and workflow from both a customer service and technical efficiency perspective.
Enhancing Routing Efficiency and Performance in Mobile Ad-Hoc Networks Using Deep Learning Techniques
Abstract— MANET stands for Mobile Ad-hoc Network also
called wireless Ad-hoc Network or Ad-hoc Wireless Network. It is
a decentralized wireless network consisting of mobile devices
(nodes) that communicate with each other without relying on a
fixed infrastructure. MANET forms a highly dynamic
autonomous topology with the presence of one or multiple
different transceivers between modes. MANETs consist of a peer
to-peer, self-configuring and self-healing modes. Mobile Ad-hoc
Network has wide range of applications such as military and
defense operations, healthcare, sensor networks, wireless sensor
networks, Internet of Things (IoT) etc. In order to enhance the
routing efficiency and performance in Mobile Ad-Hoc Networks
(MANETs) this paper proposing different deep learning
techniques.
Keywords— Mobile Ad-Hoc Networks, Wireless Network
Topology, Wireless Communication, Deep Learning.
Enhancing Routing Efficiency and Performance in Mobile Ad-Hoc Networks Using Deep Learning Techniques
Abstract— MANET stands for Mobile Ad-hoc Network also
called wireless Ad-hoc Network or Ad-hoc Wireless Network. It is
a decentralized wireless network consisting of mobile devices
(nodes) that communicate with each other without relying on a
fixed infrastructure. MANET forms a highly dynamic
autonomous topology with the presence of one or multiple
different transceivers between modes. MANETs consist of a peer
to-peer, self-configuring and self-healing modes. Mobile Ad-hoc
Network has wide range of applications such as military and
defense operations, healthcare, sensor networks, wireless sensor
networks, Internet of Things (IoT) etc. In order to enhance the
routing efficiency and performance in Mobile Ad-Hoc Networks
(MANETs) this paper proposing different deep learning
techniques.
Keywords— Mobile Ad-Hoc Networks, Wireless Network
Topology, Wireless Communication, Deep Learning.
Machine Learning based Multi-Variate MBB-User Growth Prediction and Worst-Cell Clustering in Cellular Network
The Paper herein, introduces the algorithm and the model of machine learning where Multiple variable linear regression model, support vector machine, K-Means clustering method is used to predict the mean user number depending of some other variables. This analysis will help a market operation and planning team of a telecom network, to design and optimize the network and achieve maximum users under a telecom network. The worst cells which we obtained from the clustering methods will help them to work with the worst cells and solve network issues or capacity issues to get more subscriber to improve their profit. This analysis will help to plan and design cluster by cluster which is also very important for a telecom operator. The final result correctly leads the company to predict the user number of a network, which definitely provides great commercial value and help to build a good and customer-centric mobile network. The predictive models and clustering algorithms provide actionable insights and recommendations for improv- ing network efficiency, QoS, and user satisfaction. Despite the promising results, the research faces several limitations and challenges, including data quality issues, model interpretability, and algorithm scalability. Future research directions may focus on addressing these challenges and exploring new techniques for enhancing predictive accuracy, model explain ability, and computational efficiency