Studying the Impact of Water Supply on Wheat Yield by using Principle Lasso Radial Machine Learning Model

Abstract

Wheat plays a vital role in the food production as it fulfills 60% requirements of calories and proteins to the 35% of the world population. Owing to wheat importance in food, wheat demand is increasing continuously. Wheat yield is committed to the availability of water supply. Due to climatic and environmental variations of different countries, water supply is not available in constant and desire quantity that is necessary for better wheat yield. So, there is a strong relationship and dependency that exists between water supply and wheat yield. Therefore, water supply is becoming an issue because it directly effects wheat yield. In this research, a Principle Lasso Radial (PLR) model is proposed using Machine Learning technique to measure the effect of water supply on wheat yield. In this Principle Lasso Radial (PLR) model, various experiments are conducted with respect to the performance metrics, i.e. relative water contents, waxiness, grain per spike and plant height. Principle Lasso Radial (PLR) model’s produced reduced dimensional data with respect to performance metrics. That data is provided to Radial Basis Neural Network (RBNN), and it showed regression values R under different water supply conditions. Principle Lasso Radial (PLR) model achieved an accuracy of 89% among variance Machine Learning techniques.

Authors and Affiliations

Muhammad Adnan, M. Abid, M. Ahsan Latif, Abaid-ur- Rehman, Naheed Akhter

Keywords

Related Articles

Cas-GANs: An Approach of Dialogue Policy Learning based on GAN and RL Techniques

Dialogue management systems are commonly applied in daily life, such as online shopping, hotel booking, and driving booking. Efficient dialogue management policy helps systems to respond to the user in an effective way....

IoT based Temperature and Humidity Controlling using Arduino and Raspberry Pi

Internet of Things (IoT) plays a pivotal part in our mundane daily life by controlling electronic devices using networks. The controlling is done by minutely observing the important parameters which generate vital pieces...

Efficient Model for Distributed Computing based on Smart Embedded Agent

Technological advances of embedded computing exposed humans to an increasing intrusion of computing in their day-to-day life (e.g. smart devices). Cooperation, autonomy, and mobility made the agent a promising mechanism...

An Agglomerative Hierarchical Clustering with Association Rules for Discovering Climate Change Patterns

Ozone analysis is the process of identifying meaningful patterns that would facilitate the prediction of future trends. One of the common techniques that have been used for ozone analysis is the clustering technique. Clu...

The Impact and Challenges of Cloud Computing Adoption on Public Universities in Southwestern Nigeria

This study investigates the impact and challenges of the adoption of cloud computing by public universities in the Southwestern part of Nigeria. A sample size of 100 IT staff, 50 para-IT staff and 50 students were select...

Download PDF file
  • EP ID EP276807
  • DOI 10.14569/IJACSA.2018.090232
  • Views 84
  • Downloads 0

How To Cite

Muhammad Adnan, M. Abid, M. Ahsan Latif, Abaid-ur- Rehman, Naheed Akhter (2018). Studying the Impact of Water Supply on Wheat Yield by using Principle Lasso Radial Machine Learning Model. International Journal of Advanced Computer Science & Applications, 9(2), 229-235. https://europub.co.uk./articles/-A-276807