Smart monitoring technologies for personal thermal comfort: A review
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Sandro Nižetić | Toni Perković | Velimir Čongradac | Petar Šolić | Ana Čulić | S. Nižetić | P. Šolić | T. Perković | V. Čongradac | A. Culic
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