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Influence of electricity availability on the intention to invest in residential real estate in Akure Nigeria: Mediating roles of perceived behavioral control and attitude
, Pages: 1-8 A. Adepoju and H. Babalola PDF (650K) |
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Abstract: Globally, factors influencing the residential real estate market are of great importance. This study examines the influence of theory of planned behavior constructs as well as introduces uninterrupted electricity supply as electricity availability construct in place of the locational attributes on intention to invest in residential real estate. In addition to the mediation effects of attitude and perceived behavioral control on the relationships between electricity availability and intention to invest in real estate property. The data for this study were obtained from the residents of government-reserved areas in Akure, Ondo State, Nigeria. Based on random sampling techniques, a total of 132 questionnaires were useful for this study. The results established the indirect-only mediation and the no-effect non-mediation for both paths via attitude and perceived behavioral control respectively. Among other results, the study concluded that attitude is a reliable antecedent of behavioral intention in making a decision to invest in residential real estate in the study area. DOI: 10.5267/j.jfs.2022.8.001 Keywords: Residential real estate, Theory of Planned Behavior, Attitude, Perceived behavior control, Intention, Electricity availability, Variance-based Structural Equation Model
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Strategies to Counter Supply Chain Disruptions for FMCG Brands during a Pandemic
, Pages: 9-16 Nabila Khayer, Joydev Karmakar Rahul and Souvik Chakraborty PDF (650K) |
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Abstract: The FMCG sector in developing nations is still not prepared to withstand any disruption brought on by the worldwide pandemic. In order to adapt to the new normal, businesses must make both micro and broad changes to their supply chain strategy. The goal of this research is to create plans to minimize any disruptions caused by upcoming pandemics. To restore the broken supply chain, a number of new implications and adjustments to the current attributes were proposed in the areas of sourcing, manufacturing, and distribution. Finding the fundamental drivers that are frequently impacted by the disturbance is part of the technique. The afflicted locations were the focus of the models' development. The ideas work as preventative measures intended to thwart the disturbance when and if it happens. In order to assess the model's viability, the Key Performance Indicators (KPI) value was ultimately retrieved with the aid of 25 industry experts. These suggestions may result in improved transparency, real-time monitoring, cost effectiveness, and responsiveness, among other benefits. Our analysis indicates that the KPI scores for procurement, production, and distribution are 92.86%, 82.14%, and 87.50%, respectively. The models' total viability is 87.50%. The most recent Covid-19 pandemic has provided us with a vivid illustration of what could go wrong in such circumstances. In both pandemic and non-pandemic conditions, the adaptation of stated suggestions at the aspect of sourcing, production, and distribution might result in a significant shift to organization-wide activities. DOI: 10.5267/j.jfs.2022.8.002 Keywords: Horizontal Collaboration, Artificial Intelligence, Predictive Maintenance, Smart Warehouse Management, Key Performance Indicators
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The role of wildfires in a sustainable future
, Pages: 17-22 Ebrahim Sharifi PDF (650K) |
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Abstract: Climate change and global warming have led to many risks and changes for the Earth, including the increase in natural fires, floods, air pollution, unusual seasons, etc. The increase in the trend of global warming may bring many countries underwater. For instance, the populous Asian nation of Bangladesh is most vulnerable to rising sea levels. It is estimated that a rise of just one meter in sea level is enough to submerge 30,000 square kilometres of the coastal areas of Bangladesh and displace 15 million people. Therefore, it is crucial to determine the effects of different factors on global warming and take possible actions to reduce the damage. Among various factors, natural fires are believed to be responsible for up to 20% of greenhouse gas production in the world. The source of 80% of fresh water in the United States is believed to be forest lands, which means the effect of natural fires can be disastrous not only for drinking water but also for aquatic habitats. In this paper, we present a survey on the impacts of forest fires on global warming. DOI: 10.5267/j.jfs.2022.8.003 Keywords: Global warming, Wildfire, Forest fire, Climate change, Natural disasters
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Neural network based model for estimating cutting force during machining of Ti6Al4V alloy
, Pages: 23-32 R. R. Malagi, Rolvin Barreto and S. R. Chougula PDF (650K) |
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Abstract: The evolving technology has pushed machine learning techniques to replace human smartness. A machine learning model is capable of learning and replicating like our brain. This approach of data-driven model is implemented to predict the cutting force in machining of Ti6Al4V. Titanium alloys are commonly used in high strength applications due to their excellent properties. These same properties make the machining of the titanium alloy complicated. An attempt has been made for finding the cutting force under minimum quantity lubrication (MQL). MQL is a sustainable manufacturing-based lubrication system. Taguchi’s approach was used to attain a full factorial design for combination of different parameters. Accordingly, a neural network (NN) model was developed which was capable of predicting cutting forces based on the trained model. The proposed model could be implemented to find optimal parameters in shortest duration, thereby eliminating the need for experimental computations. DOI: 10.5267/j.jfs.2022.8.004 Keywords: ANN, Cutting Force, Levenberg-Marquardt, MQL Machining, Number of Neurons, Titanium Alloy
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Review on current status and challenging issues of land subsidence in Iran
, Pages: 33-38 Seyed Jafar Sadjadi PDF (650K) |
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Abstract: Land subsidence in Iran is one of the environmental issues of recent years in Iran, which is mostly due to shortage of the groundwater resources. Iran is considered as the country with the most land subsidence. The amount of land subsidence in Iran is believed to be far more than the average of developed countries. Presently, over 300 plains of Iran are suffering from land subsidence and in some plains of Iran, the conditions have passed the subsidence and the ground has entered the critical stage of creating sinkholes. This paper presents an overview of the current status and challenging issues of land subsidence in Iran. DOI: 10.5267/j.jfs.2022.9.001 Keywords: Land subsidence, Land use planning, Water shortage, Global warming
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