2019
DOI: 10.29303/dtm.v9i2.280
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Improving the surface hardness number of subsoil plow chisel using water-jet preening

Abstract: This study discusses the effects of pressure in waterjet peening (WJP)  of subsoil plow chise. It was made from austenitic stainless steel 301 JIS standard S30100. Analysis of surface integrity and change of surface hardness number is used to evaluate the performance of various parameters in the WJP process. The article summarizes information about austenitic stainless steel physically-mechanical of subsoil plow chisel that is most useful for soil tillage. The subsoil chisel was given surface treatment WJP pro… Show more

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“…Unfortunately, some types of wear, such as brittle cracking and wear under a high temperature and pressure (Dzidowski, 2011) as well as cavitational wear (Ferrari, 2017), have not been described in a quantitative way. For this reason, the analytical models were created only for the selected groups of elements (Sujita, 2019) and for particular operational states and wear types (Jasiński et al , 2018). Therefore, later studies focused on stochastic models.…”
Section: Literature Surveymentioning
confidence: 99%
“…Unfortunately, some types of wear, such as brittle cracking and wear under a high temperature and pressure (Dzidowski, 2011) as well as cavitational wear (Ferrari, 2017), have not been described in a quantitative way. For this reason, the analytical models were created only for the selected groups of elements (Sujita, 2019) and for particular operational states and wear types (Jasiński et al , 2018). Therefore, later studies focused on stochastic models.…”
Section: Literature Surveymentioning
confidence: 99%