Cavity Yield-Cost Models Peter H. Garbincius Fermilab IWLC2010 – Geneve October 2010 filename: PHG cavity yield-cost models oct2010.ppt.

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Cavity Yield-Cost Models Peter H. Garbincius Fermilab IWLC2010 – Geneve October 2010 filename: PHG cavity yield-cost models oct2010.ppt

introduction following Jim Kerby at BAW-1 – KEK -10sept2010 How does cost of cavities vary with yield, reprocessing, and spread of operating cavity gradients (± 20% with ≥ 35 MV/m)? f = processing/(materials + fabrication + processing) Wilhelm B => f = 0.35 (TESLA model) Jim Kerby => f = 0.30so I’ll use = cavity cost factor = average price paid per useful cavity/production cost = 1.00 if Y=100% & no need to reprocess PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 2

yield vs. cost models analyzed: = = processing fraction = RDR: Y = 80% - no reprocessing => ccf = 1/Y = 1.25 Y1=Y2=80%, reprocess, Y composite = 96%, ccf = 1.11 Y composite =90%, Y1=Y2=68.4% reprocess, ccf = 1.22 simple calculation for above 3 cases, see below for: ILC processed cavities in DB, reprocess < 35 MV/m ILC DB, grad spread for G ≥ 25, 28, 30, 35, reprocess Rong-Li’s 8 most recent ACCEL/RI cavities –fixed G ≥ 35 MV/m => Y1 = 62.5% (Y2 = 67%) Y composite = 87.5% –for accepted G ≥ 31 MV/m => Gradient spread => ± 15% Peter’s class of toy models of cavity performance PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 3

PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 4 for G ≥ 35 MV/m

Analysis of ILC EP Cavity Performance Kerby_BAW-1_page2.xls + Akira-23sept 2010 PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 5

Analysis of ILC EP Cavity Performance Kerby_BAW-1_page2.xls summary & plots PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 6

PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 7

- just first pass: Y1 = 87.5%, G ≥ 31, = 36.8 => ± 15% ccf = reprocess only A15 => find Y2 = 0, same & spread ccf = 1.19 indicates that 87-90% is attainable but some small % will never pass need larger statistical sample For fixed G ≥ 35 MV/m –Y1 = 62.5%, reprocess all 37.5% that fail Y2 = 67%, Ycomposite = 87.5% ccf = 1.28 –But A15 had little hope of passing, so only reprocess 2, both pass 2 nd test => ccf = 1.24 Accepting a spread in G: PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 8 Rong-Li’s 8 latest ACCEL/RI cavities

Peter’s simple model – vary parameters –(Glo,Ghi) = range of Gradients in first test –assumed flat for this example, can change –Ghi = absolute maximum G for these cavities –Go = Gradient threshold for acceptance –f = processing/(materials + fabrication + processing) –ccf = cavity cost factor (defined above) PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 9

Peter’s simple model (2) PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 10

Peter’s simple model (3) PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 11 Y2 = prob pass 2 prob pass 2 + prob fail 2 a function of result of 1st test

Peter’s Y1=flat model – vary parameters PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 12 obvious lesson: get Glo as high as possible!

conclusions RDR model for disposable cavity yield ccf = 1.25 was simplistic and maybe somewhat conservative, but, experience of entire ILC cavity database shows current yields are too low to attain even ccf = 1.25 Rong-Li’s analysis of last 8 ACCEL/RI cavities is encouraging - latest results showing progress should be given higher weight in any projection Watch out for pathologies, e.g. AC126, Z132, A15, these will limit cost savings Accepting range of cavity operating gradients can reduce cost, but not quantatively demonstrated yet Need more statistics! PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 13

back-up slides PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 14

Cavity Yield & Cost Model (2 nd process/test) Y1 = yield for first test,Y2 = yield of second process & test assume Y1 = Y2 – this may not be true: first failure may not be correctable by second processing assume all cavities failing first test are reprocessed & retested this may not be true: 1 st test may show non-recoverable defect let YF = desired final yield after 2 tests, then Y1 + (1-Y1)*Y2 = YF => Y + (1-Y)*Y = YF for Y1=Y2=Y to get YF = 90% (goal of R&D), can solve to get Y = 68.4% Currently for cavities w ILC processing Y1 = 36%, Y2 = 29% Seems pretty aggressive to get to Y = 68% and YF = 90%, may not be attainable cumulatively over all ILC R&D cavities, but hopefully this rate could be attained by end of TDP, such yield is needed for economics of cavity construction What is impact on average cost of acceptable cavities? PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 15

Cavity Cost Model (2 nd process/test) Assuming processing is fraction f of cavity initial production, then cost of cavity processed twice is (1+f) cost units Jim Kerby estimates f=0.30, Wilhelm Bialowons ests f= 0.35 then total cost thru second process test = 1 + Y1*f given final yield = YF, = (1+Y*f)/YF and ______ = for Kerby’s f= 0.30 and for Wilhelm’s f=0.35 both for Y = 68.4% to give YF = 90% some small net savings, wrt RDR, but at lower required yield Y compared to for RDR “throw away” model for Y = 80% However, if ILC attains Y = 80%, the 2 nd process/test model would give YF = 96% and = for f=0.3 and for f=0.35 PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 16

summary of cavity processing RDR estimate used a very crude, conservative model: if a cavity failed its initial vertical test, it was discarded, not reprocessed, nor was the niobium recycled. However, the Yield for this first test was assumed to be 80%. These correspond to Y1=0.8, Y2=0, f=0 in my eqns. Reprocessing and retesting can have a major cost impact If Y1 = Y2 = 80%, the decreases 1.25 => 1.11 (avg JK+WB) but if Y1 = Y2 = 68.4%, then although YF = 90%, the only decreases1.250 => Costs (incl. Yield) for 15,801 cavities is 10.6% of RDR est. So with 2 nd process & retest, we would save Y=80% => ( )/1.25 * 10.6% = 1.19% of RDR est Y=68.4% => ( )/1.25*10.6% = 0.26% of RDR est. PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 17

follow-up comments to Marc Relative to the cost of fabricating and processing the cavity once (= 1.00 unit cost) Average cost of accepted cavity for Y=80% without reprocessing (RDR model) is 1.25 units penalty = 0.25 units Average cost of accepted cavity for Y1=Y2=80% WITH one additional reprocessing is 1.12 units penalty = 0.12 units This agrees with Wilhelm’s observation!, but Average cost of accepted cavity for Y1=Y2=68.4% WITH one additional reprocessing is units penalty = units, small savings wrt RDR Moral: reprocessing helps, but gotta IMPROVE YIELD PHG - Cavity Yield-Cost Models Geneve - Oct2010 ILC - Global Design Effort 18