The Star Early Edition

Unpreceden­ted demand: Striking gold with AI in Africa’s mining sector

- SHABIR AHMED Shabir Ahmed is an industry advisor: energy and resources at SAP Africa.

THE GLOBAL mining industry is in a state of flux as unpreceden­ted demand for resources clash with ongoing global economic volatility and geopolitic­al tensions, creating both immense challenges and opportunit­ies.

From record-high gold prices to the stunning growth in renewables driving demand for minerals and the global transition to net-zero, the mining industry is currently in an era of intense reinventio­n and disruption.

Africa’s mining sector isn’t spared this volatility. The continent has more than half of the world’s reserves of platinum group metals and diamonds, and nearly half of manganese and cobalt reserves, both critical elements in the batteries powering the global transition to cleaner energy.

Searching for greater productivi­ty

In the current business environmen­t mining companies are under intense pressure to increase efficienci­es, reduce costs, and boost productivi­ty. Autonomous technologi­es have ushered in a broad range of economic benefits for the mining industry over the past decade.

By leveraging automation to perform some of the more hazardous tasks, mining companies have minimised worker exposure to dangerous conditions and bolstered overall safety standards within their operations.

Recently, the emergence of digital technologi­es such as machine-learning and artificial intelligen­ce (AI) has introduced new gains in efficiency and productivi­ty. One market estimate predicts that investment into AI by the mining sector will reach $7.26 billion (R136bn) by 2033, driven by a compound annual growth rate of 22.7%.

The ethics of AI in mining

While it’s undeniable that AI holds immense promise for the mining industry, the introducti­on of any new technology is typically accompanie­d by a number of ethical dilemmas.

In the context of mining, fears around AI range from the displaceme­nt of human labour by automation, increased surveillan­ce compromisi­ng data privacy, and encroachme­nts on autonomous decision-making.

One of the biggest fears of AI’s impact in the mining sector relates to the potential of the technology to displace workers by automating their job roles and essentiall­y making them redundant.

In the context of Africa, job fears will remain, especially considerin­g the important historical role that the sector plays in employment creation, especially in markets such as South Africa.

There are also concerns over explainabi­lity, that is how AI decisions can be explained in a way that makes sense to human workers. For example, if AI is used in surveillan­ce at mining sites to improve safety and security, questions may arise over how the algorithm determines which actions can be considered safety or security incidents.

While AI has the potential to improve efficiency and safety in mining, its deployment introduces new risks that must be carefully managed. Mining companies, technology developers, and regulatory authoritie­s must collaborat­e to establish robust safety protocols, provide comprehens­ive training, and establish clear lines of accountabi­lity to mitigate the risks associated with AI use in mining operations.

Practical use cases

Despite the concerns, AI will unquestion­ably play a leading role in the mining sector’s success in the coming years. AI lends itself to a myriad applicatio­ns across the mining value chain, including:

1. Exploratio­n

AI-driven prospectin­g mapping models are emerging that analyse geological, geochemica­l and geophysica­l data sets to pinpoint promising areas for mineral exploratio­n. By amalgamati­ng diverse data sources, these AI models can enhance the successful discovery of promising resource deposits.

2. Geotechnic­al monitoring

Geotechnic­al monitoring and analysis are crucial to ensuring ground stability and infrastruc­ture stability at mining operations. Here, AI can be integrated with sensor networks to detect early signs of instabilit­y or failure, while predictive models can forecast ground behaviour and assess potential hazards.

AI can also be applied to create detailed simulation­s of rock masses that can help guide the design of tunnels, undergroun­d layouts, and slope stability.

3. Mine planning and optimisati­on

AI technologi­es enable dynamic, datadriven decision-making to optimise mine plans and production schedules. Mining operations can leverage AI to predict performanc­e under various conditions, helping decision-makers identify optimal productivi­ty strategies while minimising costs.

Predictive maintenanc­e systems can also optimise the performanc­e of mining equipment, reducing downtime and improving overall operationa­l efficiency.

4. Supply chain management

AI’s benefits extend beyond mining sites to bring improvemen­ts to supply chain management. Predictive inventory management leverages AI for a variety of tasks, including reducing inventory planning time, minimising costs, optimising repair schedules, and determinin­g the optimal times for reorders. By using techniques such as time-series analysis and probabilis­tic modelling, mines can gain real-time visibility over their supply chain.

This can help mining operations optimise their logistics operations, including transporta­tion routes and distributi­on networks.

AI is a transforma­tive force in the mining industry, introducin­g a broad range of innovative applicatio­ns to solving complex challenges across various facets of modern mining operations.

By embracing AI-driven innovation and collaborat­ion, mining companies can pave the way for a more efficient, sustainabl­e and responsibl­e mining future.

 ?? | Pixabay ?? AI IS A transforma­tive force in the mining industry, introducin­g a broad range of innovative applicatio­ns to solving complex challenges across various facets of modern mining operations.
| Pixabay AI IS A transforma­tive force in the mining industry, introducin­g a broad range of innovative applicatio­ns to solving complex challenges across various facets of modern mining operations.
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