The AI agricultural revolution: A fertile ground for growth - The EE

The AI agricultural revolution: A fertile ground for growth

Agriculture and farming are two of the oldest and most important fields in the world. Over time, humanity has come a long way in how we farm and grow crops with the introduction of various agricultural technologies. This trend is set to continue, as robotic systems and artificial intelligence (AI) enable farms to be more profitable, efficient, safe, and environmentally friendly, with tech companies pioneering the AI agricultural revolution, says Ron Baruchi, CEO of Agmatix.

As the world population continues to grow and the amount of arable land decreases, it is vital for farmers to get creative and become more efficient, using less land to produce more crops by increasing the productivity and yield of those farmed acres.

According to the World Government Summit Report, entitled ‘Agriculture 4.0 The Future of FarmingTechnology’, we will need to produce 70% more food by 2050 due to continuously growing demand and with farmland limited, a large proportion of this increased supply will need to come from making existing growth sites more efficient.

Agriculture is already lagging behind, with about 800 million people worldwide suffering from hunger and the world’s population assumed to grow to nearly 10 billion by 2050. On the current trajectory, 8% of the world’s population will still be undernourished by 2030. The added challenges of water, environmental impacts and less arable land, against the backdrop of global warming and population growth, are bringing mankind to a point where it must adapt and innovate to survive. Just as in the era leading up to the first agricultural revolution, our way of living and consumption does not allow the status quo to continue as is.

Fortunately, Agriculture 4.0 is developing at a rapid pace to address these growing issues within the agricultural industry. Akin to Industry 4.0, this refers to the next big trends facing the industry, including a greater focus on tools for precision agriculture, as well as agricultural technology (‘AgTech’), the internet of things (IoT), and the use of big data to drive greater business efficiencies and better decisions in the face of challenges such as rising populations and climate change.

Amongst those in the agricultural community, usage of AI technology is already growing in popularity, as these systems become more and more integrated with current machinery. On its current path, IoT-enabled agricultural monitoring is agriculture’s fastest-growing technology segment, projected to reach $4.5 billion (€4.27 billion) by 2025. Global spending on smart, connected agricultural technologies and systems as a whole, including AI and machine learning use in agriculture, is projected to triple in revenue by 2025, reaching $15.3 billion (€14.51 billion) per year.

Agriculture 4.0 will no longer depend on solely applying water, and other crop inputs uniformly across entire fields. Instead, by using AI as part of Agriculture 4.0, farmers will use the minimum quantities required for production and target specific areas to produce better yields more efficiently and profitably. These smart technological advancements mean that the farming and agricultural operations landscape of the future will look very different, incorporating smart technological advancements such as sensors, devices, machines, and information technology. The data farmers collect through these technologies can be utilised via field trial management to collaborate and share across stakeholders to plan, orchestrate and analyse field trials, driving forward new innovations in agriculture.

Agri Tech companies have already started to harness these new technologies, with visible results. By harmonising and standardising all agronomic data and turning it into actionable insights, it is possible to make results from big data universally accessible. By supporting agriculture professionals globally, they are succeeding in overcoming obstacles in sustainable food production and quality, through crop nutrition optimisation, among other things.

The possibilities of utilising AI within today’s agricultural sphere seem almost limitless, but the ability to improve crop yield prediction is arguably one of its most critical capabilities. The process involves using real-time sensors and drones to provide data and visual analytics based on soil, meteorological, environmental, and crop parameters. Ultimately, this helps farmers to get the most out of their crops and avoid waste.

Another useful way of leveraging AI technology to drive waste reduction is to optimise crop nutrition application. With product prices increasing, there is rising demand for technologies to reduce costs while increasing yields. Among other uses, these new AI technologies aid farmers and agronomists in calculating the right mix of pesticides and fertilisers to use on a certain area, while limiting application to only the field areas shown as needing treatment. Beyond this, other focus areas across the industry, such as yield mapping to find patterns, identifying irrigation leaks, solving labor shortages, and monitoring the health of livestock are all made easier and more productive using AI.

Ron Baruchi

Ultimately, in order for the industry to adapt and thrive in step with growing trends, we will inevitably see the increased adoption of multiple precision tools and sophisticated technologies across the agricultural world from AI, robots and drones to the Internet of Things (IoT), temperature sensors, aerial site images, ground/soil sensors and GPS. However, like any technology, achieving true, long-term success goes beyond the physical devices and relies entirely on the way in which they are used.

For the agricultural world, making these critical efficiencies and boosting productivity is dependent on utilising the various tools effectively to extract and deliver useful, live information to the farmer, as well as ensuring the precise management of these devices, which all have different outputs, formats and data types. This requires sophisticated tools and software to integrate with vast amounts of Big Data and research information, a difficult task made easier through cross platform data sharing.

The author is Ron Baruchi, CEO of Agmatix.

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