Optische Prozessanalysatoren für die Lebensmittelindustrie

Die Innovationsfreude der Lebensmittelindustrie wird als gering eingestuft, obgleich sie in Deutschland die viertgroste Industriebranche darstellt. Jedoch sind die Herausforderungen in der Lebensmittelindustrie deutlich groser als zum Beispiel in der chemischen Industrie. Die Rohstoffe sind meist komplexer und an ihre Verarbeitung werden zumeist hohere Anforderungen gestellt. Am Beispiel von optischen Messverfahren wird das Potenzial der Prozessanalytik zur Bereitstellung von Informationen uber Rohstoffe, Zwischen- und Endprodukte von Lebensmittelherstellungsprozessen dargestellt. The innovation enthusiasm of the food industry is considered to be low, although it is the fourth largest industrial sector in Germany. However, the challenges in the food industry are significantly larger than for example in the chemical industry. The raw materials are usually more complex and higher demands are usually placed on their processing. Using the example of optical measurement methods, the potential of process analytics to provide information on raw materials, intermediate and end products is demonstrated for food production processes.

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