Autonomous maritime ecosystem : digital concepts and business case : results from the JYU TJTSM54 course on advanced topics on systems development
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Date
2019ISBN
978-951-39-7689-7Keywords
Digitalisation Digitalisation of maritime industry Container Cargo tracking Unmanned vessel Ethically aligned design Remote pilotage Maritime industry Maritime robotics Smart containter Tracking in maritime industry Smart harbour Autonomous vehicle Artificial intelligence Ethics of Artificial Intelligence SEMAT Software Engineering Method and Theory Student project Machine learning meriteollisuus merikuljetus tavaraliikenne kontit digitalisaatio automaatio tekoäly älytekniikka miehittämättömät ajoneuvot systeemiajattelu projektioppiminen
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