TY - JOUR
T1 - DROP app
T2 - A hydroclimate information service to deliver scientific rainfall, local rainfall, and soil moisture forecasts for agricultural decision-making
AU - Sutanto, Samuel Jonson
AU - Paparrizos, Spyridon
AU - Nauta, Lisanne
AU - Supit, Iwan
AU - Lefèvre, Victoria
AU - Kranjac-Berisavljevic, Gordana
AU - Gandaa, Bizoola Zinzoola
AU - Dogbey, Richard
AU - Jamaldeen, Baba Mohammadu
AU - Ludwig, Fulco
PY - 2025/2/28
Y1 - 2025/2/28
N2 - Weather and Climate Information Services developed for agriculture often only provide scientific weather and climate forecasts on various timescales. Yet, local forecasts derived from indigenous knowledge and soil moisture information are still missing. In this study, we evaluate the implementation of the DROP app, a hydroclimate information service, offering both local (LF) and scientific rainfall forecasts (SF) and soil moisture forecasts, that was designed with and for smallholder farmers working on rainfed agriculture in northern Ghana. Results of the forecast assessment show that the LF generates a high probability of rain detection (POD), with a minimum value of 0.7. The hybrid forecast (HF) that integrates the SF and LF yields the highest POD value of 0.9 compared to others. However, the hybrid system also has a high number of false alarms which results in an overall lower forecast performance of HF compared to SF. Using forecasts obtained from the app, farmers adjusted their farming activities, such as time of sowing, planting and weeding dates, fertilizer and herbicide application, and harvesting. Although some limitations exist, the DROP app has potential to deliver actionable knowledge for climate-smart farm decision-making and thus, facilitate effective agriculture management.
AB - Weather and Climate Information Services developed for agriculture often only provide scientific weather and climate forecasts on various timescales. Yet, local forecasts derived from indigenous knowledge and soil moisture information are still missing. In this study, we evaluate the implementation of the DROP app, a hydroclimate information service, offering both local (LF) and scientific rainfall forecasts (SF) and soil moisture forecasts, that was designed with and for smallholder farmers working on rainfed agriculture in northern Ghana. Results of the forecast assessment show that the LF generates a high probability of rain detection (POD), with a minimum value of 0.7. The hybrid forecast (HF) that integrates the SF and LF yields the highest POD value of 0.9 compared to others. However, the hybrid system also has a high number of false alarms which results in an overall lower forecast performance of HF compared to SF. Using forecasts obtained from the app, farmers adjusted their farming activities, such as time of sowing, planting and weeding dates, fertilizer and herbicide application, and harvesting. Although some limitations exist, the DROP app has potential to deliver actionable knowledge for climate-smart farm decision-making and thus, facilitate effective agriculture management.
KW - Agriculture practices
KW - Forecast skills
KW - Soil moisture forecasts
KW - Weather forecasts
U2 - 10.1016/j.heliyon.2025.e42740
DO - 10.1016/j.heliyon.2025.e42740
M3 - Article
AN - SCOPUS:85217980007
SN - 2405-8440
VL - 11
JO - Heliyon
JF - Heliyon
IS - 4
M1 - e42740
ER -