The Significance of Industrial Robots

The Significance of Industrial Robots

Manufacturing Technology Insights | Monday, May 23, 2022

Industrial robots are currently ubiquitous in factories, warehouses, and industries across the globe.

FREMONT, CA: The assembly of small components into larger units is vital in the production process. Previously, this assembly type could only be accomplished by combining human skill, eyesight, and intelligence. Recent technological breakthroughs have made it possible for robots to do many of these activities. Robots that can distribute bonding chemicals are a related technology because many assembly procedures require adhesives.

Stay ahead of the industry with exclusive feature stories on the top companies, expert insights and the latest news delivered straight to your inbox. Subscribe today.

Typically, assembly robots are secured to the floor or an overhead trestle and cannot move. Numerous robots used for assembly and adhesive dispensing have XYZ or Cartesian configurations. Six-axis robots, which can move more freely than XYZ robots, will be utilized in increasingly complex systems.

Assembly Robots

Automotive was among the first industries to utilize industrial robots for assembly. Today, the uses for assembly robots extend far beyond the automotive industry. There is an increasing demand for rapid robotic assembly of tiny components. The precision and speed of robotic assembly frequently result in a larger output and greater precision than is possible with human labor.

Adhesive Dispensing Robots

A dispensing robot applies adhesives and sealants for various purposes. Among these are attaching components and enclosing them with a sealant. A tiny, high-speed robot is required for smaller tasks such as glue and epoxy distribution. Robots with a heavier payload are utilized for larger applications, such as those typically seen in the automotive industry.

In the category of assembly and dispensing, different types of robots include nailing and stapling robots, riveting robots, screwdriver robots, and wiring and cabling robots.

Handling and Picking

Handling and picking robots convey goods throughout a warehouse or remove items from a tote and deposit them in a shipping container. With the development of e-commerce, the need for robots that can pick and fulfill orders is substantial and expanding.

Material Handling Robots

Transporting items is one of the most prevalent duties in warehouses and factories. Studies indicate that most of an industrial worker's day is spent walking, pushing a cart, or driving industrial vehicles such as forklifts. These tasks have a minimal value-added and are therefore prime candidates for automation.

Autonomous forklifts are becoming increasingly common. It is advantageous to reduce the amount of labor required to transport goods, but there is also a safety concern. Hundreds of forklift-related fatalities and thousands of forklift-related injuries occur every year. Autonomous forklifts employ several sensors that allow them to avoid collisions.

Autonomous mobile robots (AMRs) comprise larger autonomous vehicles, such as forklifts, and smaller autonomous vehicles, such as carts. An AMR is frequently used to transport goods from an order picker to a packing station in a warehouse. Conveyor systems consisting of moving belts or spinning cylinders have been utilized to convey things within a facility for a very long time. However, conveyor systems have limited adaptability, and reconfiguring many conveyor systems is costly and time-consuming. AMRs are highly adaptable because, after creating a map of the facility, they can go autonomously from one location to the next, avoiding obstacles.

Liquid Handling Robots

The testing of medical samples, the analysis of liquids' chemical composition, and biological experiments are three applications that require frequent pipetting regularly. Pipetting is the technique of suctioning a little liquid into a syringe and transferring the liquid in exact volumes into a second container.

Pipetting can consume hours per day for laboratory and medical professionals. It is a manual, repetitive process in which errors are easily made.

To create eye drops, nasal sprays, and various other liquid pharmaceuticals, pharmaceutical companies must distribute precise quantities of liquids into containers.

These procedures can be automated by liquid-handling robots, resulting in increased throughput, greater accuracy, and enhanced traceability.

More in News

Industrial and automation environments are under pressure to move beyond isolated control systems toward integrated production intelligence. Many facilities still operate with fragmented architectures where programmable logic controllers, supervisory systems and enterprise platforms function in parallel rather than in coordination. This disconnect often results in manual reporting, delayed decision-making and limited visibility across production, quality and resource consumption. Executives evaluating automation partners are no longer focused solely on machine-level control but on how effectively information flows across the plant and into business systems. A meaningful solution begins with the ability to unify production and administrative layers without introducing excessive complexity. Systems that can read production orders directly from enterprise platforms and return real-time consumption data create a closed feedback loop that reduces dependency on manual reconciliation. This linkage allows production managers, operators and finance teams to work from a shared view of operations, improving planning accuracy and cost tracking. Absence of such integration often leads to duplicated effort, inconsistent records and limited traceability. Flexibility in deployment also plays a central role in vendor selection. Manufacturing environments vary widely, from greenfield plants requiring full electrical and automation buildouts to brownfield facilities that need targeted upgrades or supervisory support. A capable partner must adapt its involvement to the client’s operating model, whether delivering complete electrical infrastructure, supporting local installation teams or integrating into existing systems. Rigid delivery models tend to increase project risk and slow implementation, particularly when plants must remain operational during transitions. "The company’s development of its manufacturing administrative system enables real-time exchange of production orders and operational data, replacing manual reporting with continuous digital tracking." Equally important is the shift toward eliminating manual processes within production environments. Paper-based logs, audit forms and maintenance records continue to create inefficiencies and introduce error. Digitizing these processes and linking them directly to production events allows organizations to maintain a continuous record of operations, from raw material intake to finished output. Real-time access through mobile devices or centralized dashboards enhances responsiveness and supports better operational discipline. Systems that enable traceability across inputs, outputs and auxiliary services provide a more complete understanding of plant performance. Integration across departments has become another defining expectation. Production no longer operates in isolation from laboratory analysis, maintenance or energy usage. Solutions that consolidate data from these areas into a unified platform allow decision-makers to assess performance in context rather than through disconnected reports. This broader visibility supports more informed adjustments to production parameters and resource allocation, particularly in environments with complex batch processes or distributed operations. IASA presents a model aligned with these evolving expectations by delivering integrated automation and information systems rather than standalone control solutions. It combines electrical infrastructure, control system programming and enterprise integration into a unified offering that connects plant operations with business systems. Its approach centers on building tailored solutions that reflect each client’s production requirements, extending from PLC and SCADA upgrades to full-scale integration with ERP platforms such as SAP. The company’s development of its manufacturing administrative system enables real-time exchange of production orders and operational data, replacing manual reporting with continuous digital tracking. It also supports paperless operations, mobile access to performance data and maintenance visibility through tools such as QR-based equipment tracking. This combination of customization, system integration and process digitization positions it as a strong choice for organizations aiming to align production control with enterprise visibility. ...Read more
Achieving operational excellence depends on efficient processes, proactive quality control, and optimized product lifecycles. A significant contributor to this is the synergistic integration of AI vision systems with established enterprise solutions like Product Lifecycle Management (PLM) and manufacturing workflow software. This combination enables real-time defect detection, enhances PLM, and streamlines production processes.  Enhancing Quality Control Through AI Vision Systems AI vision systems present a transformative advancement over traditional quality control methods, delivering real-time defect detection and anomaly identification with exceptional accuracy. Leveraging high-resolution cameras and advanced algorithms, these systems visually inspect products as they progress through the production line, enabling manufacturers to proactively detect and address quality issues. When integrated with manufacturing workflow software, AI vision systems can trigger immediate actions—such as halting production lines, alerting personnel, isolating defective products, and generating detailed reports. This real-time feedback loop helps reduce waste, minimize rework, and enables swift corrective actions to maintain production efficiency. Companies like CA Engineering apply these systems to improve operational efficiency and support a more responsive, automated manufacturing environment. Connecting AI vision system data with SAP PLM establishes a closed-loop quality management framework. This integration empowers manufacturers to make data-driven decisions throughout the product lifecycle, fostering continuous improvement in product quality and significantly reducing costs associated with defects and warranty claims. International School of Tucson provides globally-focused education, offering a curriculum that emphasizes language immersion and cultural awareness to prepare students for international careers. Streamlined Production Processes The incorporation of AI vision systems into manufacturing workflow software enhances quality and optimizes production processes. The automation of visual inspection reduces the need for manual examinations, thereby reallocating human capital to more complex and high-value responsibilities. Real-time defect detection capabilities mitigate disruptions to the production flow. By promptly identifying and resolving issues, manufacturers can avert bottlenecks and sustain optimal throughput. The comprehensive reports generated by the AI vision system, integrated into workflow management, provide valuable data for process optimization, facilitating the identification of areas that necessitate adjustments to machine settings or operator training. This integration also facilitates predictive maintenance. By analyzing trends in detected defects, manufacturers can identify potential equipment failures before they occur, enabling proactive maintenance and preventing costly downtime. The integration of AI vision systems with SAP PLM and manufacturing workflow software marks a significant step toward achieving genuine operational excellence within the manufacturing sector. This integrated methodology facilitates real-time defect identification, furnishes invaluable data for optimized product lifecycle management, and contributes to the rationalization of production processes. Consequently, manufacturers are empowered to yield superior quality products, mitigate operational expenditures, and secure a competitive advantage in the marketplace. As advancements in AI and machine learning technologies persist, the incorporation of visual intelligence into foundational enterprise systems will increasingly assume a pivotal role in driving success within the manufacturing industry. ...Read more
Manufacturing technology has entered a new phase of maturity. What was once viewed primarily as factory automation now encompasses a broad ecosystem of software, analytics, artificial intelligence, robotics, industrial connectivity and digital engineering tools. Manufacturers are no longer investing in technology simply to increase output. They are using it to improve decision-making, strengthen supply chain visibility, address workforce challenges and create more adaptable production environments. The shift reflects broader pressures across the industrial economy. Supply chain disruptions, rising labor costs, geopolitical uncertainty and changing customer expectations have forced manufacturers to reconsider how products are designed, produced and delivered. Technology has emerged as one of the most effective ways to build resilience while maintaining efficiency and profitability. Manufacturing leaders increasingly view digital transformation as a long-term business strategy rather than a collection of isolated projects. Investment priorities now extend beyond production equipment to include data infrastructure, advanced analytics, intelligent automation and software platforms capable of connecting information across the enterprise. Artificial intelligence has become one of the most closely watched developments in the sector. Manufacturers spent years experimenting with AI through pilot projects and limited deployments. The conversation has shifted toward practical applications that generate measurable business value. Predictive maintenance, production scheduling, quality inspection and demand forecasting have become some of the most common use cases. Computer vision solutions allow manufacturers to detect defects more consistently than by manual inspection. ML-based systems are increasing the effectiveness of maintenance planning by enabling a facility to predict equipment failure before it occurs and requires expensive repair. Capacity, inventory and customer demand are being managed better by production planners with the use of AI-based systems. Digital twins are also gaining traction across the industry. These virtual representations of products, assets and facilities allow manufacturers to simulate performance, evaluate potential changes and test different scenarios before making physical adjustments. The technology helps reduce risk, shorten development cycles and improve resource utilization. Industrial connectivity remains another major area of focus. Sensors, industrial Internet of Things platforms and edge computing technologies are creating unprecedented visibility across manufacturing environments. Information that was once trapped within individual machines or production lines can now be analyzed in real time, allowing teams to identify bottlenecks, monitor performance and respond more quickly to emerging issues. The convergence of information technology and operational technology continues to shape investment decisions. Manufacturers increasingly want systems capable of connecting factory-floor equipment with enterprise applications, supply chain platforms and business intelligence tools. The goal is not simply to collect more data. It is creating a unified view of the business that supports faster and better-informed decisions. Manufacturing technology providers find enterprise buyers to be far more critical in how they measure investment and acquisition decisions. While cost savings are still critical, it is seldom the only investment driver. Flexibility, expandability, and value generation for years to come are increasingly important. Integration capabilities often sit near the top of evaluation criteria. Many manufacturers operate complex technology environments built over decades. Legacy equipment, multiple facilities and diverse software platforms create significant challenges when introducing new technologies. New technology solutions, which can be integrated into the existing environment with minimal replacement effort, are often the ones that spark the greatest interest. The issue of security has also come to the forefront. The interconnected nature of the factories offers further avenues of increased efficiency, but also increases the potential for increased security vulnerabilities. Manufacturing firms now require vendors to present comprehensive security frameworks, robust governance and adequate support systems in the purchasing phase. "Manufacturing technology has become a central pillar of industrial competitiveness. From artificial intelligence and robotics to connected factories and digital engineering platforms, manufacturers are investing in technologies that improve productivity, strengthen resilience and support faster responses to changing market conditions." Talent remains a persistent challenge across the industry. Advanced manufacturing technologies require skills that many organizations continue to struggle to find. Demand for expertise in data analytics, automation, robotics, cybersecurity and artificial intelligence continues to outpace supply in many regions. Technology investments can rise and fall depending on whether or not workforces are prepared to handle the new technology as opposed to the actual technology. Scaling successful initiatives presents another obstacle. Most manufacturers have success on the pilot programs, but they will find it difficult to scale them up to more sites. Equipment, process and labor expertise differ from one to another, which may cause complicated unexpected problems to be resolved during pilot programs. The distinction between mature providers and basic vendors becomes increasingly clear in these situations. Mature providers typically bring industry expertise, integration experience, implementation methodologies and long-term support capabilities. Basic vendors may offer strong product functionality but struggle to address the broader challenges associated with enterprise adoption. Sustainability objectives are impacting investment priorities as well. The pressure on manufacturers to reduce waste, use energy more efficiently and emit less has intensified from customers, investors, and government regulators. Technology platforms that offer visibility into resource usage and performance, especially for sustainability purposes, are proving to be an important investment. The next chapter of manufacturing technology will likely be defined by deeper intelligence, greater autonomy and stronger connectivity. Artificial intelligence will become more deeply embedded within production systems. Robotics will continue to evolve beyond repetitive tasks into more adaptive applications. Digital twins will expand from engineering environments into broader business planning and decision support functions. Human expertise will remain central to success. Technology can provide insights, automate processes and improve visibility, but strategic decisions still depend on skilled professionals who understand the complexities of manufacturing operations and market dynamics. Manufacturing technology has developed into a competitive weapon that impacts our productivity, resilience, innovation and future growth. It is the companies that manage to integrate smart technologies with strong leadership, human skills and rigorous operations execution that will face the best future, overcoming threats and taking advantage of the emerging opportunities.  ...Read more
Industrial and automation solutions have become fundamental to advancing modern manufacturing and industrial ecosystems. As global industries face growing pressure to enhance efficiency, control operational costs and maintain consistent product quality, automation has emerged as a critical driver of transformation. Organizations adopting scalable and adaptable automation frameworks are better equipped to meet evolving market expectations, strengthen operational resilience and sustain long-term growth in an increasingly competitive landscape across regions, including Latin America. KEY MARKET DRIVERS ACCELERATING INDUSTRIAL AUTOMATION ADOPTION The industrial automation market is influenced by a blend of economic, operational and technological forces that continue to reshape manufacturing strategies. A key driver is the need to boost productivity while addressing rising labor costs and ongoing workforce shortages. Automation enables organizations to execute repetitive and complex processes faster and with greater precision, reducing reliance on manual intervention and improving overall consistency. This transition enables businesses to sustain performance levels even in constrained labor environments, particularly in developing industrial regions such as Latin America. Another important factor is the growing demand for superior product quality and reduced production timelines. Customers increasingly expect accuracy, reliability and faster delivery, pushing manufacturers to adopt advanced production capabilities. Automation tools, including programmable control systems and robotic assembly technologies, enable companies to meet these expectations by minimizing defects and ensuring stable output. Also, recent supply chain disruptions have emphasized the importance of operational agility, prompting organizations to implement automation solutions that enhance adaptability and mitigate production risks across global markets, including Latin America. Compliance requirements and workplace safety considerations are also contributing to increased adoption. Industries must meet stringent regulatory standards that require enhanced monitoring and control mechanisms. Automation technologies help limit human exposure to hazardous conditions, improve process transparency and support adherence to safety regulations. Collectively, these elements are driving widespread automation adoption across multiple industrial domains. ADVANCED TECHNOLOGIES TRANSFORMING MODERN INDUSTRIAL AUTOMATION SYSTEMS Technological progress remains a cornerstone of industrial automation, enabling notable improvements in efficiency, scalability and operational intelligence. The adoption of IoT has facilitated the development of interconnected industrial environments where equipment and systems exchange data seamlessly. Embedded sensors gather continuous operational data, allowing organizations to assess performance, identify irregularities and refine processes with greater precision.   A higher level of connectivity enhances decision-making and supports ongoing operational optimization. Robotics continues to evolve significantly, particularly with the rise of collaborative systems that function alongside human workers. These advanced robotic solutions combine accuracy, speed and safety, allowing organizations to automate critical processes while maintaining operational flexibility.  Digital twin technology and simulation tools are redefining how industrial systems are planned and optimized. By creating virtual models of physical assets, organizations can evaluate different scenarios, streamline workflows and detect inefficiencies before implementation. This approach reduces operational risks, shortens development cycles and enhances planning accuracy. In parallel, integrated software platforms enable centralized oversight and real-time performance tracking, ensuring cohesive management across automation systems. "Automation technologies help limit human exposure to hazardous conditions, improve process transparency and support adherence to safety regulations." Environmental sustainability is increasingly influencing automation strategies. Organizations are prioritizing energyefficient technologies that reduce resource consumption and minimize waste. Automation supports precise energy monitoring and efficient process control, helping industries align operational performance with environmental objectives while maintaining productivity standards.   STRATEGIC GROWTH OPPORTUNITIES SHAPING FUTURE AUTOMATION MARKETS The industrial automation sector offers significant opportunities driven by the expanding adoption of smart manufacturing and digital transformation initiatives. Rapid industrialization in emerging economies is creating strong demand for advanced automation solutions. As digital infrastructure improves, organizations in these regions are investing in technologies that enhance efficiency and align with global manufacturing standards. This environment creates opportunities for providers to offer scalable, adaptable solutions tailored to local needs, particularly in Latin America.  The integration of automation with cloud computing and advanced analytics is another major growth area. Cloud-enabled platforms support remote access, centralized data management and in-depth performance analysis, allowing organizations to optimize operations across distributed facilities. This capability enhances flexibility and enables faster responses to shifting market dynamics. Increasing connectivity is further encouraging the use of cloud-based systems to drive innovation and efficiency. Workforce growth is also shaping the future of automation. While automation reduces reliance on manual tasks, it simultaneously increases demand for technically skilled professionals capable of managing advanced systems. Organizations are prioritizing workforce development through targeted training and upskilling programs to support digital transformation efforts.  Building technical expertise is essential to leverage automation investments and sustain long-term competitiveness fully. Flexible and modular automation systems are gaining traction as industries seek solutions that can adapt to changing production requirements. Modular configurations allow organizations to expand capabilities, integrate new technologies and adjust operations with minimal disruption. This adaptability enhances responsiveness and supports long-term strategic planning. Collaborative partnerships among technology providers, system integrators and industrial enterprises are accelerating innovation and market growth. These alliances enable the development of comprehensive solutions that address complex operational challenges while improving efficiency and scalability. By combining expertise and resources, organizations can deploy advanced automation systems that deliver measurable value and strengthen competitive positioning. ...Read more