Khasru Alam, Jiaul H. Paik, Soumen Saha, Raviraj V. Suresh
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TAR: A Highly Accurate Machine-Learning Model to Predict the Cocoon Shell Weight of Tasar Silkworm Antheraea Mylitta
In this paper, we propose a machine-learning model for predicting the shell weight of silkworm cocoons Antheraea mylitta D. (Saturnidae) without cutting open the cocoon. Our proposed work uses a topology adaptive kernel regression (TAR) to predict the shell weight of cocoons based on a set of non-invasive easy-to-measure cocoon features. We evaluate our model on four datasets from different families of cocoons. The evaluation shows that the proposed model accurately predicts the shell weight and outperforms well-known models, including neural network-based regression.
期刊介绍:
The main objective of this initiative is to promote agricultural research and development. The journal will publish high quality original research papers and critical reviews on emerging fields and concepts for providing future directions. The publications will include both applied and basic research covering the following disciplines of agricultural sciences: Genetic resources, genetics and breeding, biotechnology, physiology, biochemistry, management of biotic and abiotic stresses, and nutrition of field crops, horticultural crops, livestock and fishes; agricultural meteorology, environmental sciences, forestry and agro forestry, agronomy, soils and soil management, microbiology, water management, agricultural engineering and technology, agricultural policy, agricultural economics, food nutrition, agricultural statistics, and extension research; impact of climate change and the emerging technologies on agriculture, and the role of agricultural research and innovation for development.