Mardare, A. I.; Ludwig, A.; Savan, A.; Wieck, A. D.; Hassel, A. W.: Combinatorial investigation of Hf–Ta thin films and their anodic oxides. Electrochim. Acta 55 (27), pp. 7884 - 7891 (2010)
Mardare, A. I.; Hassel, A. W.: Quantitative optical recognition of highly reproducible ultra thin oxide films in microelectrochemical anodisation. Rev. Sci Instrum. 80, pp. 046106-1 - 046106-3 (2009)
Mardare, A. I.; Savan, A.; Ludwig, A.; Wieck, A. D.; Hassel, A. W.: A combinatorial passivation study of Ta–Ti alloys. Corrosion Science 51, pp. 1519 - 1527 (2009)
Mardare, A. I.; Savan, A.; Ludwig, A.; Wieck, A. D.; Hassel, A. W.: High-throughput synthesis and characterization of anodic oxides on Nb–Ti alloys. Electrochimica Acta 54, pp. 5973 - 5980 (2009)
Mardare, A. I.; Savan, A.; Ludwig, A.; Wieck, A. D.; Hassel, A. W.: High throughput study of the anodic oxidation of Hf–Ti thin films. Electrochimica Acta 54, pp. 5171 - 5178 (2009)
Mardare, A. I.; Wieck, A. D.; Hassel, A. W.: Microelectrochemical lithography: A method for direct writing of surface oxides. Electrochim. Acta 52, pp. 7865 - 7869 (2007)
Mardare, A. I.; Ludwig, A.; Savan, A.; Wieck, A. D.; Hassel, A. W.: High throughput growth and in situ characterization of anodic oxides on Ti, Ta and Hf combinatorial alloys. “Electrochemistry: Crossing Boundaries”, GDCh, Gießen, Germany (2008)
Mardare, A. I.; Wieck, A. D.; Hassel, A. W.: Combinatorial microelectrochemistry using an automated scanning droplet cell. 59th Annual Meeting of the International Society of Electrochemistry, Sevilla, Spanien (2008)
Mardare, A. I.; Wieck, A. D.; Hassel, A. W.: High throughput synthesis and characterization of anodic oxides on valve metal combinatorial libraries. 2nd International IMPRS-SurMat Workshop on Surface and Interface Engineering in Advanced Materials, Bochum, Germany (2008)
Mardare, A. I.; Wieck, A. D.; Hassel, A. W.: High throughput processing and characterization of surface oxides using an automated scanning droplet cell. 212th ECS Meeting, Washington, D.C., USA (2007)
Mardare, A. I.; Wieck, A. D.; Hassel, A. W.: High Througput Synthesis and Characterization of Ti Based Combinatorial Alloys. 7th International Symposium on Electrochemical Micro- and Nanosystems, Ein-Gedi, Israel (2008)
Mardare, A. I.; Ludwig, A.; Savan, A.; Wieck, A. D.; Hassel, A. W.: Combinatorial microelectrochemistry with a scanning droplet cell on binary and ternary Ti, Ta and Hf alloys. International Smposium on Anodizing Science and Technology 2008, Rusutsu, Japan (2008)
Mardare, A. I.; Wieck, A.; Hassel, A. W.: Combinatorial electrochemistry on valve metal alloys. 2nd International IMPRS-SurMat Workshop on Surface and Interface Engineering in Advanced Materials, Bochum, Deutschland (2008)
Mardare, A. I.; Borodin, S.; Rohwerder, M.; Wieck, A. D.; Hassel, A. W.: Gold nanoparticles growth and their embedding in thin anodic alumina. 58th Annual Meeting of the International Society of Electrochemistry, Banff, Canada (2007)
Mardare, A. I.; Wieck, A.D.; Hassel, A. W.: High throughput measurements using an automated scanning droplet cell. GDCh Wissenschaftsforum 2007, Ulm, Germany (2007)
Mardare, A. I.: High throughput growth, modification and characterization of thin anodic oxides on valve metals. Dissertation, Ruhr-Universität Bochum, Fakultät für Physik und Astronomie, Bochum, Germany (2009)
Scientists of the Max-Planck-Institut für Eisenforschung pioneer new machine learning model for corrosion-resistant alloy design. Their results are now published in the journal Science Advances
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