Analytics In Manufacturing: Current Trends And Opportunities

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Data analytics is essential for decision-making in today’s time. Most businesses make crucial decisions based on data collection and analysis. Besides strengthening the decision-making process for most businesses, data analytics can improve the manufacturing industry. Data analysis in manufacturing can bring excellent results for the businesses in this industry.

So, how can data analytics improve the efficiency of a business? Find the answer to this question in the following section of this article.

Data Analytics Is Essential for Ai Integration

Today, artificial intelligence has become a matter of discussion for various business sectors. Implementing AI technology can increase the efficiency of a manufacturing unit. At the same time, AI will reduce the dependency on human resources. An AI-integrated manufacturing unit can automate the process without depending on human instructions. Therefore, the overall productivity of a manufacturing unit grows drastically with artificial intelligence. According to the industry estimation, the market size of AI in manufacturing will be around $9.89bln by 2027.

Data analytics is the fundamental stage of introducing AI in a manufacturing system. Machine learning algorithms depend on the data collected from various sources. The machine interprets data and improves the algorithm to enhance efficiency. The system does not need human intervention to update the algorithm, as machine learning algorithms can update themselves with the support of data analytics in the manufacturing industry.

Discrete Event Simulation

The modern manufacturing system is complex, and thus it requires many powerful tools for a seamless operation. Discrete Event Simulation (DES) is one of those powerful tools that can represent a complex manufacturing process. The DES model depends on the event sequences that occur at discrete intervals. The DES model gives a virtual environment to control a manufacturing process. The business owners and managers can perform planning, scheduling, allocating resources, and many other tasks using the DES model. Data analytics is an integral part of this model, and it helps the manufacturing plants to operate systematically. Nevertheless, it also helps in optimum usage of resources and minimizes wastage.

Product Quality Analysis

While stressing on an intensified production, many manufacturing systems lose control over the quality. Losing quality eventually reduces sales and fetches a poor brand reputation. Big data analytics in manufacturing can help in the product quality analysis process. Various factors are taken into consideration for testing the quality of products. Data analytics ensures that product testing happens in a systematic order. Nevertheless, it also speeds up the process.

Productivity Analysis

Many businesses produce goods without realizing the optimum production capacity. Staying unaware of the production capacity can make a business inefficient. Therefore, a manufacturing facility must undergo a productivity analysis. For analyzing the optimum productivity of a manufacturing plant, the managers have to check various data. Through a seamless data analytics process, the business managers will realize the maximum production capacity of a manufacturing unit. Thus, they can plan and arrange resources accordingly to optimize production.

Predictive Maintenance

The introduction of big data in manufacturing has brought predictive maintenance for the manufacturing process. Predictive maintenance helps the manufacturing unit schedule maintenance according to the requirements. Business managers can reduce the downtime due to maintenance with the help of predictive maintenance. Moreover, it also keeps the manufacturing units well-efficient and long-lasting.

Data analytics bolster a manufacturing unit, and a data-driven approach helps the business owners to optimize the production, capacity, and efficiency of the manufacturing plants. North America is the leading force to implement analytics in manufacturing industries. However, other countries have started bolstering their manufacturing sector using data analytics. So, these have been a few changes occurring in the manufacturing industry for the last few years.