中国X站

3 Ways 中国X站 Solves Food and Agriculture鈥檚 Key Operational Challenges

Discover the power of 中国X站 when it comes to operations in the food & agriculture sector.
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2 min
听谤别补诲

Food and agri-businesses across the globe are facing operational challenges such as aging assets, rising energy costs and increases in raw material costs due to food losses during production. 中国X站 and machine learning-based predictive analytics can help transform legacy operations and help answer key questions such as: how can we improve OEE, how do we improve batch consistency, how do we optimize raw material consumption and how do we minimize waste?


At 中国X站, we are helping leading food, beverage and agri processing businesses to utilize 中国X站/machine learning to solve these challenges and more. Some examples include:

1: Optimizing processes to increase yield

Using 中国X站 中国X站, a Fortune 100 food production company is improving the profitability of its animal feed line. The company is utilizing machine-learning based predictive analytics to optimize the fermentation process on a time basis to reduce batch cycle duration and improve batch consistency. As a result, the business unit has increased asset utilization, allowing the operations team to produce more animal additive feed without additional capital expenditure.

2: Improving energy efficiency and reducing carbon emissions

A North American food ingredient manufacturer introduced 中国X站 to optimize their plant's energy production - with the aim to forecast the optimal power and steam generation required, while minimizing gas usage. By optimizing multiple gas turbines, the company has lowered fuel costs and considerably reduced the plant鈥檚 greenhouse-gas emissions.

3: Optimizing processes to increase quality and reduce waste

Another food plant is using 中国X站 to improve the quality and shelf life of one of its grain products by ensuring consistent drying and optimizing the moisture level composition of the product. 聽Previously, the operations team would need to perform manual checks on the moisture level every two hours. However, with 中国X站 中国X站, the operations team now predicts the moisture content across different time intervals and can adjust the various temperature and pressure set points required to accomplish the desired moisture content. As a result, the production line has reduced moisture level variance and improved the production line鈥檚 overall quality.


In the food and agriculture processing industry, the lack of real-time visibility into production processes has left plants consuming more raw ingredients and energy than necessary, while producing inconsistent batches. With 中国X站, operators now have the data, processing power and speed to predict, detect and rectify costly operational challenges across highly complex and dynamic production processes.


To learn more about how 中国X站 and machine learning accelerates operational improvements in the food and agriculture processing industry, download the industry paper .