https://doi.org/10.1007/s00170-020-06074-3 ORIGINAL ARTICLE Efficient abrasive wa ter jet milling for near-net-shape fabrication of difficult-to- cut materials Eckart Uhlmann 1,2 · Constantin M ¨ annel 1 · Thomas Braun 1 Received: 2 June 2020 / Accepted: 9 September 2020 © The Author(s) 2020 Abstract The utilization of materials with high strength to density ratio enables efficiency impro vements and is therefore demanded for many applications, particularly in the aerospace and other mobility sectors. Ho we v er , the machining of these typically difficult-to-cut materials poses a challenge for con ventional manufacturing technologies due to the high tool wear . Abrasi ve water jet (A WJ) machining is a promising alternati ve manufacturing technology for machining difficult-to-cut materials, since the tool wear is lo w and material independent. Ho we ver , A WJ machining is limited regarding the producible geometries when conducting cuts through a material. This limitation can be resolv ed with A WJ milling operations which on the other hand are time-consuming. T o approach this challenge, an enhanced A WJ milling operation is presented and in vestigated in this paper with the aim to e xpand the producible geometries. This operation consists of two k erfs, inserted from different sides of the workpiece, which intersect at their k erf ground. Consequently , a piece of material is separated without the cut material being entirely chipped. Thus, the operation possesses a high aggregated material remo v al rate. The in vestigations presented in this paper sho w and e v aluate the effects that occur during the milling of k erfs with v ariable depths on titanium aluminide TNM-B1. Furthermore, a method to compensate these effects is introduced and thus the producible geometries for effecti v e A WJ milling could be enhanced. Keywords Abrasi v e water jet · Near -net-shape fabrication · T itanium aluminide · A WJ milling Nomenclature ˙ m A Abrasi v e flo w rate α c Adjusted angle of cut α c ( y ) Constant angles of cut α c , real Actual cutting angle α c Angle of cut α jf , a Opening angle of the jet forerun for conca ve shapes α jf , x Opening angle of the jet forerun for con ve x shapes α jl , a Opening angle of the jetlag for conca ve shapes α jl , x Opening angle of the jetlag for con ve x shapes A WJ Abrasi v e water jet c 1 K erf de v elopment coefficient 1 c 2 K erf de v elopment coefficient 2 Constantin M ¨ annel [email protected] berlin.de 1 T echnische Uni versit ¨ at Berlin, Institute for Machine T ools and Factory Management (IWF), Berlin, German y 2 Institute for Production Systems and Design T echnology (IPK), Fraunhofer-Gesellschaft, Berlin, German y c 3 K erf de v elopment coefficient 3 c p Po wer coefficient CFRP Carbon fibre-reinforced polymers CMC Ceramic matrix composites d f Focus tube diameter d J Jet diameter d K , c A verage cumulated k erf depth d K , diff Difference between lo west and the deepest kerf depth d K , max Maximum kerf depth d K , min Minimum kerf depth d K , m Measured kerf depth d K , p K erf depths on the primary tar get part d K , s K erf depths on the secondary tar get part d K1 K erf depth for one pass d K K erf depth d o Orifice diameter e De viation of the kerf depth to the tar get kerf EDM Electrical discharge machining f a Conca ve geometry factor f x Con ve x geometry factor fps Frames per second / Published online: 2 October 2020 The International Journal of Advanced Manufacturing Technology (2020) 111:685–693 l d Depth of specimen l f Focus tube length l s Stand of distance l W Length of specimen MMC Metal matrix composites p W ater pressure p W W o rkpiece position PTP Primary tar get part r Radius of shape r vf Relati v e velocity s Standard de viation STP Secondary tar get part TNM-B1 Gamma-T iAl T i-43,5Al-4Nb-1Mo 0,1B v f Feed speed z Number of passes 1 Introduction The A WJ technology inheres some desirable adv antages ov er the con ventional cutting processes milling, drilling and turning. These are, for example, the independence of the tool wear from the workpiece material, the absence of repercussions of the material surface on the cutting ability of the A WJ and the possibility to cut almost all kinds of materials brittle [ 1 ] and ductile [ 2 ]. Thus, A WJ is a promising technology , particularly to manufacture difficult- to-cut materials such as metal matrix composites (MMC), nickel base alloys [ 3 ], titanium aluminides [ 4 ], ceramics, ceramic matrix composites (CMC) [ 5 ] or carbon fibre- reinforced polymers (CFRP) [ 6 ]. Since the application of such materials is continuously increasing due to the demands of light weight design and efficienc y requirements, the A WJ technology has attracted further attention and the market is continuously gro wing ov er the last years. Ho we v er , the attainable surface quality of A WJ machining is limited. If a very high surface roughness is required for example for aerodynamic parts, A WJ machining might not fulfil these requirements. Consequently , a finishing operation, e.g. grinding, is required [ 7 ]. Therefore, the in vestigated A WJ technology is considered to be a near -net- shape fabrication technology . Con ventionally , the A WJ technology is a cutting process for sheet metal and other flat materials (Fig. 1 a) [ 1 ]. Ho we v er , since the producible geometries of this process are limited, further A WJ operations hav e been proposed and studied. T urning, milling and drilling [ 8 ] are some of the processes that can be adopted with the A WJ and are applied today . Milling without masks, shown in Fig. 1 b, is a process of particular interest since this operation enables further geometrical design lee ways [ 9 ]. A WJ milling operations ha ve been tested and qualified for a number of materials including titanium aluminides [ 10 ]. T o apply A WJ milling, the process parameters are usually changed. The water pressure p is reduced, the feed speed v f and the number of passes z are increased. These parameter settings generate a better surface quality b ut reduce the material remov al rate. Because of the high feed speed acceleration and deceleration procedures of the manufacturing machine hav e to be considered for this operation [ 11 ]. T o quickly design A WJ milling operations, v an Bui et al. [ 12 ] hav e suggested the use of the Gaussian curve and its superposition to describe the material remov al of the operation. Although a lot of fundamental and application kno wledge about A WJ milling operations has been achie v ed [ 13 ], the application of the technology for industrial purposes is limited. The lo w use of the technology might be due to the decreased material remov al rate and thus the long manufacturing time [ 9 ]. In order to increase the efficiency of the A WJ milling process, the superposition of two k erfs, cut from different sides of the workpiece (Fig. 1 c), w as suggested [ 14 ] and studied in detail by Faltin [ 15 ] and in pre vious in v estigations re garding the modelling possibilities [ 4 ], the implementation [ 16 ]a n d the cost-effecti v eness [ 17 ] of the approach. Faltin [ 15 ] demonstrated the feasibility of the approach and provided fundamental kno wledge for its application. Furthermore, a model has been introduced to effecti v ely design these A WJ milling operations in a pre vious work [ 4 ]. Follo wing this approach, the A WJ milling operations can be designed and predicted by the use of a po wer coefficient c p and three coefficients c 1 to c 3 for the de v elopment of a kerf ov er the number of passes z . The formulae can be con verted to formula 1 , which calculates the feed speed v f ( d K ) necessary to attain a certain kerf depth for a gi ven water pressure p and the number of passes z . v f (d K ) = p · c p · d K (z) d K · d K (z 1 ) = p · c p · (c 1 + c 2 · z + c 3 · z 2 ) d K · (c 1 + c 2 + c 3 ) (1) Both the modelling study [ 4 ] and the analysis by Faltin [ 15 ] consider only the cutting of constant kerfs depths (Fig. 1 c). In order to further increase the producible geometries and to enhance the effecti v eness of the presented efficient A WJ milling operation, it is necessary to adjust the kerf depth depending on the part design. Consequently , kerfs with v ariable kerf depths are in vestigated in this paper . K erfs with variable k erf depths are necessary , e.g. for the manufacturing of a turbine blade. The operations of interest are cuts A and B (Fig. 1 d). Once all cuts can be designed, the entire turbine blade including the blade and the fir tree connection can be manufactured by the efficient A WJ milling operation. In this study , titanium aluminide is considered workpiece material. This material is one of the abov e-described high-performance b ut difficult-to-cut materials. This material resists high stresses as well as high temperatures while offering a better strength 686 Int J Adv Manuf Technol (2020) 111:685–693 v f v f v f V r v f (x) y x z v f a) b) c) d) A B v f (x) C Fig. 1 A WJ process v ariations: a cutting; b controlled depth milling; c segment remo v al by controlled depth cutting; d machining of a turbine blade using segment remo v al by controlled depth cutting to density ratio than nickel base allo ys and thus promises further improv ements in light weight design. Furthermore, titanium aluminides are partly used in gas turbines already . Ho we v er , the manufacturing of titanium aluminides using con ventional cutting remains a challenge [ 15 ]. Hence, the application of titanium aluminides might be promoted by a more efficient manufacturing technology . T o achie v e v ariable kerf depths d K (x ) , the number of passes z , the water pressure p or the feed speed v f can be adjusted. Since the feed speed v f ( d K ) can be adjusted very precisely , this parameter is tested to ensure a homogeneous jet at all times. In the pre vious in vestig ations [ 4 ], the use of an angle of cut α c for a milling operation has sho wn a distinct influence on the kerf parameters. Comparable effects must be expected for k erfs with v ariable kerf depths d K (x ) as well. 2 Experimental setup In order to in vestigate the possibility of cutting k erfs with v ariable kerf depths d K (x ) , a series of experiments were carried out. The in vestigation comprised a detailed analysis of the water jet’ s behaviour and its deflection when cutting the desired conca ve and con v ex shapes. First, the general beha viour of the water jet w as examined and visualized with a high-speed camera to better understand the fundamental effects occurring during the cutting. Secondly , an analogy test was performed in order to e v aluate the strength of these effects. Third, a test plan was carried out cutting the desired kerfs with v ariable depths. All experiments were performed by a robot-guided water jet machine type HRX 160 L by S T MS TEIN - M OSER G MB H, Schweinfurt, German y (Fig. 2 c). The cutting head was equipped with an orifice with a diameter of d o = 0.25 mm, and a focus tube with a length of l f = 76.2 mm and a diameter of d f = 0.76 mm. A stand of distance of l s = 2 mm was applied for all tests (Fig. 2 a). Garnet mesh size 120 of GMA G ARNET (E UR OPE )G MB H, Hamb ur g, Germany , was used to cut the test material titanium aluminide, type Gamma-T iAl T i-43,5Al-4Nb-1Mo 0,1B (TNM-B1). All kerf depths d K were measured using an optical measurement device M ICR O P RO F MPR 100 by FR T G MB H, Ber gisch Gladbach, Germany . Three measurements were conducted per run. For the high-speed recording e xperiments, the camera was placed in front of the specimens, which were prepared in con ve x and conca ve shapes with a radius of r =3 0m m and a depth of l d = 1 mm. The length of the specimen was l W =6 0m m( F i g . 2 a). The specimens were fixed in between two acrylic glass panes which had a squared shape. Thus, a con ve x and conca ve k erf was constructed which enables the recording of the A WJ effects in the kerf with the high-speed camera. Each video sho wed one specimen being machined once, number of passes z =1 ,b yt h eA W J from one edge to the other for all parameter combination gi v en in T able 1 , except the gi ven angle of cut α c .E v e r y video was analysed in re gard to the opening angle of the jetlag as well as the opening angle of the jet forerun at se v eral workpiece positions p W . Additionally , the ratio of the intensity of the jetlag and the jet forerun was e valuated. The analysed positions were set in 5-mm steps between the specimen’ s edges. Thus, 176 samples of the A WJ’ s distrib utions were collected. The high-speed camera used to perform recordings of these first cutting experiments w as a F ASTCAM SA1.1 by P HO TR ON D EUTSCHLAND G MB H, Reutlingen. The F ASTCAM SA1.1 records video data which allo wed frame-by-frame analysis. This provided the possibility to select v alid image data by manually choosing an appropriate frame. The video was recorded with 10,000 frames per second (fps) and a resolution of 512 × 512 pixels. F or the lighting of the e xperimental setup, spotlights from the front and from the back were used to obtain sufficient brightness in the imagery (Fig. 2 b). The analogy tests were conducted applying the same test plan from the high-speed recording test regarding the parameters water pressure p , feed speed v f and abrasi ve flo w rate ˙ m A . The setup was modified in a w ay that the angle of cut α c remains constant for one cut (Fig. 2 d). Hence, the factor “Shape” (T able 1 ) was replaced by the constant angles of cut α c ( y ) . The setup comprised a primary tar get part (PTP) 687 Int J Adv Manuf Technol (2020) 111:685–693 Fig. 2 Experimental setup: a input and target v alues of the high-speed recording and application tests; b setup of the high-speed recording tests; c water jet machine HRX 160 L by STM STEIN-MOSER GMBH, Schweinfurt, Germany; d input and target v alues of the analogy test d) c) b) a) α jl α jf v f y x z convex specim en acry lic glass pane l W d K, min d K, max l s p W PTP STP v f d K, p d K, s y x z Jet Jet deflection α c(y) 15 m m installed beneath the jet under the angles of cut α c ( y ) .T h e jet mov ed along the x -axis causing a kerf and a jet deflection to wards a secondary tar get part (STP). T o in v estigate the intensity of the jet and the strength of its deflection, the resulting kerf depths on the primary d K , p and the secondary d K , s tar get parts were measured for 32 parameter settings. The application tests comprise the milling of kerfs with v ariable kerf depth d K (x ) . The tests were carried out by the adaption of the feed speed v f ( d K ). The application tests were set up to mill the shapes described in the high- speed recording experiments with a radius of r = 30 mm, a maximum kerf depth of d K , max = 30 mm and a minimum kerf depth of d K , min =1 5m m( F i g . 2 a). The v alues for the feed speed v f ( d K ) were deri ved using formula 1 with the coefficients and parameters gi v en in T able 2 .T h e s e parameters predict the kerf depth d K of constant k erfs. The milling of v ariable kerf depths d K (x ) is likely to influence the kerf depth be yond the effects described by formula 1 . This influence can be expected since the cutting conditions are changed compared with the cutting of constant kerf depth. Therefore, a test plan (T able 2 ) was performed to find suitable parameters. The tests were preformed twice to ensure repeatability . In order to measure the kerf depths, the specimens were separated along the kerf using EDM. Afterwards, the k erf depth was measured on the remaining kerf profiles e very 2 mm. Ta b l e 1 Experimental design for high-speed recording and analogy tests Par am et er Leve ls −− − + ++ W ater pressure p MPa 100 200 Feed speed v f mm/min 3000 5000 Abrasi ve flo w rate ˙ m A g/min 150 250 Shape - Con vex Conca v e Angle of cut α c ( y ) ◦ 22.5 45 67.5 90 Number of passes z -1 688 Int J Adv Manuf Technol (2020) 111:685–693 Ta b l e 2 Experimental design for the application tests Par am et er Le vels −+ W ater pressure p MPa 100 125 Max. feed speed v f , min mm/min 2400 3000 Min. feed speed v f , max mm/min 4800 6000 Shape - Con vex Conca v e Abrasi ve flo w rate ˙ m A g/min 150 Number of passes z - 300 Po wer coefficient c p [ 4 ] - 7.49 Coefficient c 1 [ 4 ] - 0.136 Coefficient c 2 [ 4 ] - 0.101 Coefficient c 3 [ 4 ]- − 0.22e − 4 3 Results The main effects of the opening angles observ ed during the high-speed recording in vestigations are sho wn in Fig. 3 . The diagram sho ws that in a v erage the opening angles are approximately two times higher for the conca v e geometries. In addition, the opening angle of the jet forerun for conca ve 146 34 118 80 20 0 angle of cut α c for a concave shap e e l g n a g n i n e p oα j 90 40 ° Opening angle of jetlag con cave α jl , a Opening angle of jetlag convex α jl, x Opening angle of jet forerun concave α jf, a Opening angle of jet forerun convex α jf, x Process: AWJ mill ing Tools: Garnet, Mesh 120, GMA d O =0 . 2 5 m m d F =0 . 7 6 m m l F = 76.2 m m Workpiece: TNM - B1 γ- Ti Al ° v f 06 0 15 position on the workpiece p W 30 m m 34 146 62 angle of cut α c for a convex shape 90 ° Process parameters: l s =2 m m z= 1 Fig. 3 Main effects of the jetlag and the jet forerun opening angles shapes α jf , a is higher for high angles of cut ( α c > 90 ◦ )a t the beginning of the workpiece. The jetlag of the conca v e geometry α jl , a sho ws a re v ersed behaviour and has higher opening angles for lo wer angles of cut ( α c < 90 ◦ )a t the end of the workpiece. The con v ex geometry sho ws an opposite beha viour compared with the conca ve geometry , considering the position on the workpiece p W . If the angle of cut α c is considered, the opening angle of the jet forerun α jf , x is as well higher for high angles of cut α c > 90 ◦ .I n addition, the opening angle of the jetlag α jl , x is higher for lo wer angles of cut α c > 90 ◦ . Besides the opening angles, the intensity of the jetlag and the jet forerun ha ve been analysed. This observ ation resulted in a linear increase of the jetlag’ s intensity . The increase was found for the conca ve geometry between the position of the workpiece p W = 15 to 45 mm. Correspondingly , the effects are re v ersed for the con ve x geometry and the jet forerun. The main effects of the kerf depth of the analogy test are depicted in Fig. 4 . The diagram sho ws that the primary kerf depth d K , p increases with increasing angle of cut α c , starting at α c = 22.5 ◦ until the kerf depth reaches a peak at α c = 67.5 ◦ . For the angle of cut α c =9 0 ◦ , the kerf depth is reduced. The secondary kerf depth d K , s continuously decreases with increasing angle of cut α c until d K , s =0m m at an angle of cut of α c =9 0 ◦ . Considering the setup of the tests, the results can be mirrored by α c =9 0 ◦ to higher angles. Thus, the v alue of the angle of cut of α c = 67.5 ◦ also applies for the angle of cut of α c = 112.5 ◦ and the angle of cut of α c =4 5 ◦ for the angle of cut of α c = 135 ◦ , and the angle of cut of α c = 157.5 ◦ equals the angle of cut of α c = 22.5 ◦ .I nF i g . 4 , only the values of the angle of cut of α c = 67.5 ◦ are mirrored to wards the angle of cut of α c = 112.5 ◦ . Figure 5 sho ws the results of the con ve x kerfs of the application experiments. The black line marks the tar get kerf. The arro w bars indicate the standard deviation s of 689 Int J Adv Manuf Technol (2020) 111:685–693 22.5 112.5 45 0.16 0.04 0 angle of cut α c h t p e d f r e kd K 67.5 0.08 ° Primary kerf depth d K, p Secondary kerf depth d K, s Com bined kerf depth d K, p+s Tool s: Garnet, Mesh 120, GMA d O =0 . 2 5 m m d F =0 . 7 6 m m l F = 76.2 m m mm v f α c(y) PTP STP y x z Process: AWJ millin g Workp iece: TNM - B1 γ -TiAl Process parameters: l s =2 m m z= 1 Fig. 4 Main effects of the kerf depth caused by the primary and the secondary jet the kerf depth. The diagram sho ws that the results are well distrib uted around the target k erf. All kerfs seem to fit the tar get kerf in a sufficient manner . The difference caused by the parameter settings does not change the shape of the kerf and the a verage difference between lo west and the deepest kerf depth is d K , diff = 10.7 mm. The best kerf re garding the con ve x shape seems to be the parameter with high feed speed and high water pressure p . The kerf depth results of the conca v e shape are more di v ersified (Fig. 6 ). In comparison with the con vex shape, the kerf depths of the different parameter combinations are much further apart, with an a verage difference of the kerf depth of d K , diff = 20.4 mm. Furthermore, none of the parameter settings was able to fit the conca ve shape flawless regardless of the depth. Notably , most of the curves seem to ha ve a flattened be ginning and end. 4 Discussion The results of the high-speed recording in vestigations demonstrated that there is a general difference reg arding the opening angles between con ve x and conca ve geometries. Fig. 5 Results of the application test: kerf depth d K of the con ve x kerfs with v ariable kerf depth Furthermore, the test re v eals that all opening angles are lo w at v ery high α c = 146 ◦ and very lo w α c = 34 ◦ angles of cut. The cutting intensity of the jetlag or the jet forerun is likely to depend on the opening angles and the intensity of the jet deflection. If a point on the workpiece outside the primary jet is observed, high opening angles of the secondary jet ha ve little impact on this point since the intensity is spread out. Ho we v er , small opening angles might ha ve a strong effect on this point. Consequently , the highest cutting potential of the secondary jet can be expected for con v ex geometries at v ery lo w angles of cut α c due to the jetlag and at ve ry high angles of cut α c due to the jet forerun. High cutting potential can also be expected for conca ve geometries at very high angles due to the jet forerun and at very lo w angles due to the jetlag. The results of the analogy test confirm this assumption and make this effect appraisable. The test re veals that the kerf depth created by the secondary jet increases with a highly increased or highly decreased angle of cut α c . Ho we v er , the test shows that the combined k erf depth does not increase due to the decreasing primary kerf depth. 690 Int J Adv Manuf Technol (2020) 111:685–693 Fig. 6 Results of the application test: kerf depth d K of the conca ve kerfs with v ariable kerf depth The application test in Fig. 6 sho ws very different results compared with Fig. 5 , although only the shape of the radius r was changed from con v ex to conca ve. Consequently , the effects described abov e must interact with the cutting of v ariable kerf depths. The con v ex geometry is in a verage well reproduced by the approach. Ho we v er , if the model [ 4 ] would be applicable, the parameter setting with p = 100 MP a and v f , max = 6000 mm/min should ha ve reproduced the shape accurately . The offset between the measured kerf depth d K , m and the tar get v alue can be explained by the fact that neither jetlag nor the jet forerun effects the kerf ground at any moment. Considering that e ven at constant kerf depths the jetlag clearly contributes to the deepening of the kerf [ 15 ], it seems that this effect is not present, or strongly reduced, for con ve x shapes. Hence, a factor needs to be considered which quantifies the difference between kerfs with constant kerf depths and k erfs with con ve x geometry . This con ve x geometry factor f x (r ) is most likely to depend on the radius r of the con ve x geometry . For the gi v en results, a con ve x geometry factor f x ( r = 30 mm) = 1.6 is calculated with a standard de viation of s = 0.1. This factor can be expected to decrease for increasing radii until f x =1a n d increase for e v en smaller radii. In order to understand the lar ge de viations of the kerf depths d K for the conca ve geometry , it is necessary to consider the cutting effects of the jet at e v ery point during the cutting for e v ery stage of the kerf depth d K (Fig. 7 a). Firstly , the cutting of a constant kerf depth, angle of cut α c = 90 ◦ , needs to be analysed. Since the shape of the kerf changes during the pass of the w ater jet an actual cutting angle α c , real occurs and can be estimated from the geometrical conditions. Figure 7 b demonstrates that the real cutting angle can be calculated to be α c , real = 84, if a jet diameter of d J = 0.8 mm and a kerf depth of d K 1 = 0.086 mm is assumed for an angle of cut of α c = 90 ◦ and the number of passes z = 1. Consequently , the results sho wn in Fig. 4 should be reduced by α c − α c , real = 6 ◦ in order to correlate with the results of the v ariable kerf depths d K ( x ). F ollo wing this idea, the expected k erf depth d K is depicted in Fig. 7 . Figure 7 sho ws the e xpected kerf depth d K starting from an adjusted angle of cut of α c = 90 ◦ ( α c = 84 ◦ ). In the diagram, the kerf depth for one pass d K1 , taken from Fig. 4 , is sho wn in percent. This 100% v alue is linked to the calculation of formula 1 . The diagram in Fig. 7 cs h o w s that if a higher angle is stri v ed, the kerf depth for a pass d K 1 is lo wer than the e xpectation by formula 1 at first. Once an adjusted angle of cut of α c = 103 is reached, the kerf depth for a pass d K1 reaches again its target v alue giv en by formula 1 . Afterwards, the k erf depth per pass d K1 is higher than the calculation with a peak at the angle of cut of α c = 120 ◦ . In addition to the kerf depth per pass d K1 , the a verage cumulated k erf depth d K, c is introduced. This v alue represents the e xpected de viation of the kerf depth d K from the kerf depth gi ven by formula 1 representing 100%. Consequently , also the av erage cumulated kerf depth d K , c is lo wer than the expected v alue for the first passes z .T h e a verage cumulated k erf depth d K , c fits with the expectation at an adjusted angle of cut of α c = 112 ◦ . From this point forward, e very additional pass increases the kerf depth d K disproportionately . Thus, the kerf becomes deeper than expected by the prediction. In conclusion, the model for constant kerf depths d K [ 4 ] only fits for the adjusted angle of cut of α c = 90 ◦ and α c = 112 ◦ . Between these v alues, the kerfs are too lo w . F or higher adjusted angle of cut of α c , the kerfs are too high. Thus, the results of Fig. 6 can be explained. Lo wer A WJ parameter settings, e.g. a water pressure of p = 100 MP a and a feed speed of v f = 6000 mm/min, cause a slo wer gro wth. Consequently , most of the cutting happens in the area below the adjusted angle of cut of α c = 103 ◦ resulting in a reduced kerf depth d K . On the other hand, A WJ parameter settings with a higher water pressure p allo w a quick transition to the adjusted angle of cut of α c = 103 ◦ and abov e causing 691 Int J Adv Manuf Technol (2020) 111:685–693 90 150 105 150 75 50 adjusted angle of cut α ‘ c kerf de pth d K geom etry factor f 120 100 ° Kerf depth for on e pass d K1 Average cum ulated kerf depth d K, c Conca ve geometry fa ctor f a ( α ’ c ) Process: AWJ milling Tool s: Garnet, Mesh 120, GMA d O =0 . 2 5 m m d F =0 . 7 6 m m l F =7 6 . 2 m m Workpiece: TNM - B1 γ -T iA l l W =6 0 m m Process parameters: l s =2 m m % v f (x) α c a) c) d J d K1 α c, real y x z b) Fig. 7 Effects during the cutting of concav e kerfs: a k erf formation; b real cutting angle α c , real ; c kerf depth for a pass d K 1 , av erage cumulated kerf depth d K, c , concav e geometry factor f a a kerf deeper than predicted. This deliberation pro vides a reasonable explanation for the lar ge deviation of the k erf depth d K for conca ve geometries. In order to predict these effects, a conca ve geometry factor f a (α c ) can be implemented. This concav e geometry factor f a (α c ) depends on the desired angle of cut α c .S i n c e the radius r of the conca ve geometry effects the angle of cut α c , the conca ve geometry factor f a also depends on the Fig. 8 V alidation test of the geometry factors radius r . As a first approximation the factor f a (α c ) can be deri v ed from the a verage cumulated k erf depth d K , c .T h e factor is gi v en in Fig. 7 . A final test was conducted to v alidate the ability of the conca ve geometry factor f a and the con v ex geometry factor f x . Therefore, the shape of a turbine blade was implemented using a con ve x geometry factor f x = 1.15 (Fig. 8 ). In addition, the conca ve geometry factor f a w as calculated and implemented for e v ery point on the workpiece p W .T h e relati v e velocities r vf calculated by both geometry factors are gi v en in Fig. 8 , along with all other parameters applied. The cuts along the turbine blade C b were as well conducted by the A WJ. Since there is no kerf depth v ariation, the formula 1 has been applied without further adjustments. This test re veals that the de viation e of the kerf depth to the tar get kerf is less than e = 0.5 mm. Hence, the application of the geometry factors allo ws the manufacturing of precise v ariable kerf depths using the feed speed v f as control parameter . 5 Conclusion The objecti v e of this in vestigation was to identify and e v aluate the effects that occur during the cutting of v ariable kerf depths d K ( x ) using abrasi ve water jet machining. Three in vestigations, including a cutting observ ation using a high- speed camera, an analogy test and an application test, ha ve been conducted, measured and analysed. The paper presents and discusses the effects observed in the high- speed recording tests and the interactions of the effects during the cutting of the kerfs. The main results can be summarized as follo ws: 692 Int J Adv Manuf Technol (2020) 111:685–693 • A conca ve geometry factor f a and a con v ex geometry factor f x ha ve been introduced to describe the difference between the constant and v ariable kerf depths • The con ve x g eo m e tr y f a c t o r adjusts the decreased effects of the jet deflection and jet forerun for con ve x shapes. Consequently , the con v ex geometry factor depends on the radius r and increases with decreasing radii. • The more complex relation of con v e x shapes are compensated by the conca ve geometry factor f a (α c ) . This factor accounts for the v ariations of the adjusted angle of cut α c and thus depends on the angle of cut α c and consequently on the radius r . Compared with the con ve x geometry factor , the concav e geometry factor v aries for e v ery point ov er a concav e kerf. • In combination, both factors allo w the adjustment of the parameters of a constant kerf depth for v ariable kerf depths. As a result, the geometric possibilities for near -net-shape fabrication with the A WJ are extended allo wing the manufacturing of the shape of a turbine blade. • Thus, this A WJ milling operation can help to efficiently machine difficult-to-cut materials such as titanium aluminides and foster the efficiency impro v ements associated with these materials. Fu nd i n g Open Access funding enabled and or ganized by Projekt DEAL. This paper is based on results acquired in the project DFG UH 100/165-3, which is kindly supported by the Deutsche Forschungsgemeinschaft (DFG). 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