Intelligent Spatial Interpolation-based Frost Prediction Methodology
using Artificial Neural Networks with Limited Local Data
- URL: http://arxiv.org/abs/2204.08465v2
- Date: Sun, 14 May 2023 01:02:51 GMT
- Title: Intelligent Spatial Interpolation-based Frost Prediction Methodology
using Artificial Neural Networks with Limited Local Data
- Authors: Ian Zhou, Justin Lipman, Mehran Abolhasan and Negin Shariati
- Abstract summary: The aim of this article is to eliminate the dependency on on-site historical data and sensors for frost prediction methods.
The models use climate data from existing weather stations, digital elevation models surveys, and normalized difference vegetation index data to estimate a target site's next hour minimum temperature.
- Score: 3.3607307817827032
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The weather phenomenon of frost poses great threats to agriculture. As recent
frost prediction methods are based on on-site historical data and sensors,
extra development and deployment time are required for data collection in any
new site. The aim of this article is to eliminate the dependency on on-site
historical data and sensors for frost prediction methods. In this article, a
frost prediction method based on spatial interpolation is proposed. The models
use climate data from existing weather stations, digital elevation models
surveys, and normalized difference vegetation index data to estimate a target
site's next hour minimum temperature. The proposed method utilizes ensemble
learning to increase the model accuracy. Climate datasets are obtained from 75
weather stations across New South Wales and Australian Capital Territory areas
of Australia. The results show that the proposed method reached a detection
rate up to 92.55%.
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