Robotics and Automation in Farming

A special issue of Agronomy (ISSN 2073-4395). This special issue belongs to the section "Precision and Digital Agriculture".

Deadline for manuscript submissions: 15 February 2025 | Viewed by 3651

Special Issue Editors


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Guest Editor Assistant
Department of Agriculture, Food and Environment, University of Pisa, Via del Borghetto 80, 56124 Pisa, Italy
Interests: assessment and implementation of sustainable weed control strategies within conservation biological farming; viticulture sector

Special Issue Information

Dear Colleagues, 

With the rapid growth of the global population and the increasing demand for food, it has become imperative to adopt technological advancements to improve food production, efficiency, and sustainability. The development of robotics and automation in farming is currently at the forefront of significant research and innovation worldwide.
Applications in this field vary, with an emerging focus on robotic systems capable of selectively harvesting crops, controlling pests, diseases, and weeds, monitoring the agricultural environment and crops, autonomously supporting agricultural logistics operations, and accelerating crop selection or phenotyping. Each of these applications can bring benefits to all agricultural sectors, including arable crops, horticulture, orchards and vineyards, landscape and urban green areas, and the livestock industry.

In this Special Issue, we welcome contributions on innovative technologies, including precision and digital farming technologies, advanced robotic systems, and the use of automation in agriculture aimed at increasing the productivity, efficiency, and sustainability of farming systems. Submissions that explore the integration of these technologies into existing farming practices, the associated economic and environmental impacts, and case studies demonstrating successful implementation are particularly encouraged.

We invite experts and researchers to submit original research, reviews, and opinion pieces addressing the themes of this Special Issue.

Dr. Marco Fontanelli
Guest Editor

Dr. Lorenzo Gagliardi
Guest Editor Assistant

Manuscript Submission Information

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Keywords

  • agricultural robotics
  • automation
  • smart farming
  • precision agriculture

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Published Papers (3 papers)

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Research

19 pages, 3615 KiB  
Article
Analysis of Football Pitch Performances Based on Different Cutting Systems: From Visual Evaluation to YOLOv8
by Sofia Matilde Luglio, Christian Frasconi, Lorenzo Gagliardi, Michele Raffaelli, Andrea Peruzzi, Marco Volterrani, Simone Magni and Marco Fontanelli
Agronomy 2024, 14(11), 2645; https://doi.org/10.3390/agronomy14112645 - 10 Nov 2024
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Abstract
The quality of sports facilities, especially football pitches, has gained significant attention due to the growing importance of sports globally. This study examines the effect of two different cutting systems, a traditional ride-on mower and an autonomous mower, on the quality and functional [...] Read more.
The quality of sports facilities, especially football pitches, has gained significant attention due to the growing importance of sports globally. This study examines the effect of two different cutting systems, a traditional ride-on mower and an autonomous mower, on the quality and functional parameters of a municipal football field. The analysis includes visual assessments, measurements of grass height, and evaluations of surface hardness, comparing the performance of the two cutting systems. Additionally, studies of turfgrass composition and machine learning techniques, particularly with YOLOv8s and YOLOv8n, are conducted to test the capability of assessing weed and turfgrass species distribution. The results indicate significant differences in grass color based on the position (5.36 in the corners and 3.69 in the central area) and surface hardness between areas managed with a traditional ride-on mower (15.25 Gmax) and an autonomous mower (10.15 Gmax) in the central region. Higher height values are recorded in the area managed with the ride-on mower (2.94 cm) than with the autonomous mower (2.61 cm). Weed presence varies significantly between the two cutting systems, with the autonomous mower demonstrating higher weed coverage in the corners (17.5%). Higher overall performance metrics were obtained through YOLOv8s. This study underscores the importance of innovative management practices and monitoring techniques in optimizing the quality and playability of a football field while minimizing environmental impact and management efforts. Full article
(This article belongs to the Special Issue Robotics and Automation in Farming)
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19 pages, 6552 KiB  
Article
Map Construction and Positioning Method for LiDAR SLAM-Based Navigation of an Agricultural Field Inspection Robot
by Jiwei Qu, Zhinuo Qiu, Lanyu Li, Kangquan Guo and Dan Li
Agronomy 2024, 14(10), 2365; https://doi.org/10.3390/agronomy14102365 - 13 Oct 2024
Viewed by 1501
Abstract
In agricultural field inspection robots, constructing accurate environmental maps and achieving precise localization are essential for effective Light Detection And Ranging (LiDAR) Simultaneous Localization And Mapping (SLAM) navigation. However, navigating in occluded environments, such as mapping distortion and substantial cumulative errors, presents challenges. [...] Read more.
In agricultural field inspection robots, constructing accurate environmental maps and achieving precise localization are essential for effective Light Detection And Ranging (LiDAR) Simultaneous Localization And Mapping (SLAM) navigation. However, navigating in occluded environments, such as mapping distortion and substantial cumulative errors, presents challenges. Although current filter-based algorithms and graph optimization-based algorithms are exceptionally outstanding, they exhibit a high degree of complexity. This paper aims to investigate precise mapping and localization methods for robots, facilitating accurate LiDAR SLAM navigation in agricultural environments characterized by occlusions. Initially, a LiDAR SLAM point cloud mapping scheme is proposed based on the LiDAR Odometry And Mapping (LOAM) framework, tailored to the operational requirements of the robot. Then, the GNU Image Manipulation Program (GIMP) is employed for map optimization. This approach simplifies the map optimization process for autonomous navigation systems and aids in converting the Costmap. Finally, the Adaptive Monte Carlo Localization (AMCL) method is implemented for the robot’s positioning, using sensor data from the robot. Experimental results highlight that during outdoor navigation tests, when the robot operates at a speed of 1.6 m/s, the average error between the mapped values and actual measurements is 0.205 m. The results demonstrate that our method effectively prevents navigation mapping distortion and facilitates reliable robot positioning in experimental settings. Full article
(This article belongs to the Special Issue Robotics and Automation in Farming)
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24 pages, 10818 KiB  
Article
ADL-YOLOv8: A Field Crop Weed Detection Model Based on Improved YOLOv8
by Zhiyu Jia, Ming Zhang, Chang Yuan, Qinghua Liu, Hongrui Liu, Xiulin Qiu, Weiguo Zhao and Jinlong Shi
Agronomy 2024, 14(10), 2355; https://doi.org/10.3390/agronomy14102355 - 12 Oct 2024
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Abstract
This study presents an improved weed detection model, ADL-YOLOv8, designed to enhance detection accuracy for small targets while achieving model lightweighting. It addresses the challenge of attaining both high accuracy and low memory usage in current intelligent weeding equipment. By overcoming this issue, [...] Read more.
This study presents an improved weed detection model, ADL-YOLOv8, designed to enhance detection accuracy for small targets while achieving model lightweighting. It addresses the challenge of attaining both high accuracy and low memory usage in current intelligent weeding equipment. By overcoming this issue, the research not only reduces the hardware costs of automated impurity removal equipment but also enhances software recognition accuracy, contributing to reduced pesticide use and the promotion of sustainable agriculture. The ADL-YOLOv8 model incorporates a lighter AKConv network for better processing of specific features, an ultra-lightweight DySample upsampling module to improve accuracy and efficiency, and the LSKA-Attention mechanism for enhanced detection, particularly of small targets. On the same dataset, ADL-YOLOv8 demonstrated a 2.2% increase in precision, a 2.45% rise in recall, a 3.07% boost in [email protected], and a 1.9% enhancement in [email protected]. The model’s size was cut by 15.77%, and its computational complexity was reduced by 10.98%. These findings indicate that ADL-YOLOv8 not only exceeds the original YOLOv8n model but also surpasses the newer YOLOv9t and YOLOv10n in overall performance. The improved algorithm model makes the hardware cost required for embedded terminals lower. Full article
(This article belongs to the Special Issue Robotics and Automation in Farming)
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