Consideration of resilience for digital farming systems
- URL: http://arxiv.org/abs/2104.05287v1
- Date: Mon, 12 Apr 2021 08:36:13 GMT
- Title: Consideration of resilience for digital farming systems
- Authors: Sebastian Boekle, Leon Koenn, David Reiser, Dimitris S. Paraforos,
Hans W. Griepentrog
- Abstract summary: Cloud-based digital systems and applications need to be reliable, independent of internet supply.
Problem of development using web-based farming systems are identified and discussed.
Suggestions for soft- and hardware equipment are made.
- Score: 1.8899300124593648
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Latest and current innovations of agricultural tech industry are increasingly
driven by digital technologies. These digital farming solutions provide
attractive advantages for farmers. The trend is going to devices and sensors,
which send the acquired data directly to the cloud. Also the number of
scientific publications on cloud based solutions follows this development.
Considering on the other hand the necessity of continuous agricultural
production in any kind of crises, new cloud-based digital systems and
applications need to be reliable, independent of internet supply. In this
conceptual study the necessary resilience is defined, which is marginally taken
into account by agtech industry innovations. Problems of development using
web-based farming systems are identified and discussed. For digital farming
systems the farmers individual needs of resilience are classified into five
levels. Consequently, suggestions for soft- and hardware equipment are made.
This includes the installation of a farm server, a local farm network, offline
applications and consideration of edge computing, which can ensure a high level
of resilience of new digital farming components.
Related papers
- Towards Crowd-Based Requirements Engineering for Digital Farming (CrowdRE4DF) [0.0]
Farmers form a diverse and international crowd of practitioners who use a common pool of agricultural products and services.
Online user feedback in this domain is limited, necessitating a way of capturing user feedback from farmers in situ.
Our solution, the Farmers' Voice application, uses speech-to-text, Machine Learning (ML), and Web 2.0 technology.
arXiv Detail & Related papers (2024-06-27T13:45:21Z) - Current applications and potential future directions of reinforcement learning-based Digital Twins in agriculture [2.699900017799093]
This review aims to categorize existing research employing reinforcement learning in agricultural settings by application domains like robotics, greenhouse management, irrigation systems, and crop management.
It also categorizes the reinforcement learning techniques used, including tabular methods, Deep Q-Networks (DQN), Policy Gradient methods, and Actor-Critic algorithms.
The review seeks to provide insights into the state-of-the-art in integrating Digital Twins and reinforcement learning in agriculture.
arXiv Detail & Related papers (2024-06-13T06:38:09Z) - Multi-Tier Computing-Enabled Digital Twin in 6G Networks [50.236861239246835]
In Industry 4.0, industries such as manufacturing, automotive, and healthcare are rapidly adopting DT-based development.
The main challenges to date have been the high demands on communication and computing resources, as well as privacy and security concerns.
To achieve low latency and high security services in the emerging DT, multi-tier computing has been proposed by combining edge/fog computing and cloud computing.
arXiv Detail & Related papers (2023-12-28T13:02:53Z) - Open-sourced Data Ecosystem in Autonomous Driving: the Present and Future [130.87142103774752]
This review systematically assesses over seventy open-source autonomous driving datasets.
It offers insights into various aspects, such as the principles underlying the creation of high-quality datasets.
It also delves into the scientific and technical challenges that warrant resolution.
arXiv Detail & Related papers (2023-12-06T10:46:53Z) - Enabling Automated Integration Testing of Smart Farming Applications via
Digital Twin Prototypes [49.44419860570116]
Industry 4.0 and smart farming are closely related, as many of the technologies used in smart farming are also used in Industry 4.0.
Digital twins have the potential for cost-effective software development of such applications.
We present a case study for employing our Digital Twin Prototype approach to automated testing of software.
arXiv Detail & Related papers (2023-11-09T21:24:12Z) - Revolutionizing Agrifood Systems with Artificial Intelligence: A Survey [93.34268594812599]
We review how AI techniques can transform agrifood systems and contribute to the modern agrifood industry.
We present a progress review of AI methods in agrifood systems, specifically in agriculture, animal husbandry, and fishery.
We highlight potential challenges and promising research opportunities for transforming modern agrifood systems with AI.
arXiv Detail & Related papers (2023-05-03T05:16:54Z) - Digital Twins in Wind Energy: Emerging Technologies and
Industry-Informed Future Directions [75.81393574964038]
This article presents a comprehensive overview of the digital twin technology and its capability levels, with a specific focus on its applications in the wind energy industry.
It consolidates the definitions of digital twin and its capability levels on a scale from 0-5; 0-standalone, 1-descriptive, 2-diagnostic, 3-predictive, 4-prescriptive, 5-autonomous.
arXiv Detail & Related papers (2023-04-16T18:38:28Z) - Future Computer Systems and Networking Research in the Netherlands: A
Manifesto [137.47124933818066]
We draw attention to CompSys as a vital part of ICT.
Each of the Top Sectors of the Dutch Economy, each route in the National Research Agenda, and each of the UN Sustainable Development Goals pose challenges that cannot be addressed without CompSys advances.
arXiv Detail & Related papers (2022-05-26T11:02:29Z) - Towards a Cybersecurity Testbed for Agricultural Vehicles and
Environments [0.0]
An increasing number of agricultural systems and vehicles are connected to the Internet.
Previous research has focused on general cybersecurity concerns in the farming and agricultural industries.
This paper presents STAVE - a Security Testbed for Agricultural Vehicles and Environments.
arXiv Detail & Related papers (2022-05-12T03:27:06Z) - An Ontological Knowledge Representation for Smart Agriculture [1.5484595752241122]
An agricultural framework for smart systems is presented in this study.
The knowledge graph is represented as a lattice to capture and perform reasoning on-temporal agricultural data.
arXiv Detail & Related papers (2021-12-21T14:58:04Z) - Artificial Intelligence for Digital Agriculture at Scale: Techniques,
Policies, and Challenges [1.1245087602142634]
Digital agriculture has the promise to transform agricultural throughput.
It can do this by applying data science and engineering for mapping input factors to crop throughput, while bounding the available resources.
This paper is the first one to bring together the important questions that will guide the end-to-end pipeline for the evolution of a new generation of digital agricultural solutions.
arXiv Detail & Related papers (2020-01-21T06:02:38Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.