Despite the promise of precision agriculture for increasing the productivity by implementing site-specific management, farmers remain skeptical and its utilization rate is lower than expected. A major cause is a lack of concrete approaches to higher profitability. When involving many variables in both controlled management and monitored environment, optimal site-specific management for such high-dimensional cropping systems is considerably more complex than the traditional low-dimensional cases widely studied in the existing literature, calling for a paradigm shift in optimization of site-specific management. We propose an algorithmic approach that enables farmers to efficiently learn their own site-specific management through on-farm exper...
Effective ecological management of agroecosystems for both productivity and sustainability is by des...
Big data acquisition platforms, such as small unmanned aerial vehicles (UAVs), unmanned ground vehic...
We demonstrate the use of a surrogate-based optimization framework for large-scale and high-resoluti...
Despite the promise of precision agriculture for increasing the productivity by implementing site-sp...
Ensuring food security is a major challenge in many countries. With a growing global population, the...
Applying at the economic optimal nitrogen rate (EONR) has the potential to increase nitrogen (N) fer...
In the present time, innovation is assuming a crucial role in various areas to conquer troubles and ...
Rising global population and climate change realities dictate that agricultural productivity must be...
Agriculture is an essential part of sustaining human life. Population growth, climate change, resour...
This work aims to show how to manage heterogeneous information and data coming from real datasets th...
The potential for operations research with farmer supplied data coupled with machine learning to imp...
This work aims to show how to manage heterogeneous information and data coming from real datasets th...
In this paper, a deep-learning model is proposed as a viable approach to optimize the information on...
Agricultural fields are inherently variable across both space and time but are commonly managed unif...
Machine learning has emerged with big data technologies and high-performance computing to create new...
Effective ecological management of agroecosystems for both productivity and sustainability is by des...
Big data acquisition platforms, such as small unmanned aerial vehicles (UAVs), unmanned ground vehic...
We demonstrate the use of a surrogate-based optimization framework for large-scale and high-resoluti...
Despite the promise of precision agriculture for increasing the productivity by implementing site-sp...
Ensuring food security is a major challenge in many countries. With a growing global population, the...
Applying at the economic optimal nitrogen rate (EONR) has the potential to increase nitrogen (N) fer...
In the present time, innovation is assuming a crucial role in various areas to conquer troubles and ...
Rising global population and climate change realities dictate that agricultural productivity must be...
Agriculture is an essential part of sustaining human life. Population growth, climate change, resour...
This work aims to show how to manage heterogeneous information and data coming from real datasets th...
The potential for operations research with farmer supplied data coupled with machine learning to imp...
This work aims to show how to manage heterogeneous information and data coming from real datasets th...
In this paper, a deep-learning model is proposed as a viable approach to optimize the information on...
Agricultural fields are inherently variable across both space and time but are commonly managed unif...
Machine learning has emerged with big data technologies and high-performance computing to create new...
Effective ecological management of agroecosystems for both productivity and sustainability is by des...
Big data acquisition platforms, such as small unmanned aerial vehicles (UAVs), unmanned ground vehic...
We demonstrate the use of a surrogate-based optimization framework for large-scale and high-resoluti...