Exploring AI-Powered Inventory Optimization - Industry Today - Leader in Manufacturing & Industry News
 

October 15, 2024 Exploring AI-Powered Inventory Optimization

Inventory management faces challenges due to fluctuating inflation and supply chain disruptions. Digitization and AI offer solutions.

By Ara Surenian, Vice President Product Management, Rockwell Automation

In today’s economy, organizations across manufacturing and supply chain industries are challenged with upward pricing pressure. Over the past few years, the percentage change of the consumer price index has varied greatly, leading to significant variance in inflation. Despite hitting a 40-year high a few years ago, domestic inflation has now hit its lowest level in three years, which can be a critical factor in consumer and business purchasing decisions. These drivers can have significant impacts on inventory management, where inaccuracies can lead to significant losses.

Traditional inventory optimization relies on two primary inputs: the ordering process and buffer stock levels. The lack of visibility into real-time changes in inventory levels can create challenges in effectively forecasting customer demand. Legacy and manual inventory management systems often struggle to keep pace with rapidly changing business conditions, like fluctuating demand or supply chain disruptions. This can manifest into a high risk of overstock, leading to potential spoilage and wastage. Excess inventory can hinder cash flow as funds are invested in products that may not sell quickly, limiting available capital.

plex hausebeck factory photo

The Digital Supply Chain

To alleviate these challenges, organizations have prioritized digitization to gain better control over inventory. As operations digitize, organizations are unpacking how they can better leverage data to improve decision making. End-to-end visibility across the entire organizational ecosystem can be achieved through digitization. With digitized inventory management, organizations are taking the first step to improve control over demand.

Computerized supply chains can replace manual data handling, which can be subject to human error. Sharing data seamlessly across departments and analyzing it in real-time improves information flow and reduces reliance on reactive communications, like phone calls or emails. Unlike traditional supply chains, digital systems can reduce bullwhip and caterpillar effects, where fluctuations in demand propagate through the supply chain. With complete visibility, companies can proactively respond to disruptions or demand spikes, minimizing their negative consequences.

Advanced analytics is widely used in manufacturing, such as production and maintenance. Companies can apply predictive analytics and trend analysis to inventory and the entire supply chain using a smart manufacturing platform and demand and supply software. Though these tactics prove effective, the industry is measuring the potential benefits of artificial intelligence (AI) optimizing inventory.

Artificial Intelligence in Inventory Optimization

Navigating unexpected inflationary pressure relates to more than just cost reduction. Inventory optimization requires the predicting, handling and dispersing of accurate amounts of inventory in order to meet demand. Automated, digitized inventory systems balance a wide range of key performance indicators, statistics, requests and transactions. Though these systems provide economic benefits, additional technology offers a compelling advantage.

Advancing inventory systems beyond simple automation will require the use of AI. Inventory optimization that leverages this technology must first manage several variables, such as forecast accuracy, material lead time, minimum order quantity and capacity constraints. AI inventory optimization can take assessments a step further, to optimize materials with first in, first-out valuation; expiration monitoring; and improved regulation and compliance.

AI can be used in inventory optimization to:

  • Predict Inventory Levels: Smart manufacturing platforms leverage advanced analytics to enable AI models to predict inventory levels more accurately. These models can analyze a wider range of data than human analysis, leading to more precise forecasts.
  • Predicting Demand: AI-powered inventory optimization, often integrated into smart manufacturing platforms, can assess data to predict demand more precisely. By considering factors like regional differences and weather patterns, it can provide insights that might be missed by human analysis.
  • Sophisticated Inventory Management Techniques: Advanced inventory management techniques, such as ABC analysis, can be enhanced by AI. With access to comprehensive data, AI can more effectively predict and categorize products based on their profitability. This enables companies to target specific markets, optimize their product lines, and manage SKUs and raw material needs during shortages or constraints.

Ensuring the optimal implementation of this technology in inventory management will require the following:

  • Data Availability: Successful implementation of AI relies heavily on data. Without access to data, these systems will likely produce inaccurate predictions or flawed decisions. For optimal outcomes, inventory management systems using AI will need full access to organizational data as well as historical to ensure accurate predictions and analysis.
  • Integration with Existing Systems: A crucial factor in successful AI integration with inventory management systems is integration with existing applications and systems. This is essential to guarantee not only sufficient data access but also operational visibility, allowing all decisions to be consistently aligned with shared business objectives.
  • Security: The use of AI in these systems means interaction with sensitive business and customer data. This requires that AI models be trained in order to reduce the risk of concept bias or error.

The implementation of AI in inventory optimization is still developing. However, it does signify a growing trend towards the digitization of business processes. By embracing AI-powered inventory management, organizations can maintain a competitive edge by making data-driven decisions that anticipate market trends and mitigate risks. As the economy continues to work in flux, the potential benefits of AI in inventory optimization are more apparent than ever.

ara surenian plex systems
Ara Surenian

Ara Surenian is a supply chain veteran with over 30 years of manufacturing and technology experience. He currently leads product management and engineering for Plex Systems Advanced Supply Chain Planning Suite. Ara enjoys advising companies and sharing his knowledge at industry events and business seminars. He is a member of the Association for Supply Chain Management and the Institute of Business Forecasting.

 

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