VeriVin experiments

VeriVin and Openvino are teaming up to perform a series of experiments using VeriVin's prototype Raman spectrometer.

These experiments will be begin on the 18th of October, 2019, using new installations at Costaflores Organic Vineyard.

Here is a summary of the first three, simultaneous experiments that will be executed:

  • Do coloured wine bottles protect wine from oxidation, and what is the measurable effect of lightstrike from different types of lighting?

  • Which bottle closures better promote desirable wine evolution?

  • Can we create a unique digital fingerprint for a wine, using a spectrometer, and represent this vinoprint on the blockchain as a non-fungible token?

About VeriVin

Experiment Overview

Can we bottle 640 bottles of wine, using four different bottle colours, four different closures, and four different light sources, and perform simultaneous experiments?

  1. Do coloured wine bottles protect the wine from oxidation?

    1. Transparent v Green v Eco v Brown

      1. Initial Veralia samples (Green, ECO, Brown, transparent) available now

      2. Blue bottles not available in Mendoza

      3. Working on Veralia QA, PR people for samples and support

      4. Meeting, visit to factory, with film person

    2. Light variables: Natural light (what is this?) v LED v other artificial light v dark, in the box (control)?

      1. Define what is needed for this - design light chamber 

      2. Diurnal cycle? (simulating wine shop?)

    3. This an on-going study…publishing data as we go.

    4. testing frequency (weekly?)

    5. sensing/validating other factors - temperature, light, air quality

    6. sample size

From what I have read in literature, it seems that ‘light strike’ is mainly due to UV and Blue light. However, considering the bottles absorption spectra and the high complexity of the liquid, I wouldn’t be surprised if even green and red played a role. Obviously, intensity of radiation also matters. Also, what part of this light goes trough the bottle also matters (so, the absorption spectrum of the glass).

I think that as long as the temperature of the various enclosures is consistent, there is no need to have a special dark enclosure, a well sealed box is fine

Given that short wavelength light is incriminated, I would go for bulbs with high blue content, so, COLD WHITE LED and generally clod light. Unfortunately, fluorescence lamps that emit this light are halogen, and they also heat heavily the environment. So they are not advisable. I would rather compromise for something like a tube fluorescent light, as white as possible.

Have a look at these links to check if they may work:

Fluorescence:

https://www.lightbulbs.com/product/bulbrite-524053

LED array

https://www.amazon.it/Componente-Circuito-Stampato-Emettitore-Circolare/dp/B07DGVRTH9/ref=sr_1_10?__mk_it_IT=ÅMÅŽÕÑ&keywords=LED%2Barray&qid=1567529917&s=gateway&sr=8-10&th=1

LED panel:

https://www.amazon.it/Pannello-LED-120x60-6500K-incluso/dp/B07DT33SY8/ref=sr_1_7?__mk_it_IT=ÅMÅŽÕÑ&keywords=cold+white+LED&qid=1567529984&s=gateway&sr=8-7

 

I would try to keep illumination more or less constant to each bottle, at about 800/1200 lumen, to simulate the illumination of a supermarket, and/or to about 300/500 lumen to simulate a home environment.

This wikiHow is quite well made in my opinion:

https://www.wikihow.com/Measure-Light-Intensity

Also, we should illuminate all bottles in the same way, and be sure light distribution is uniform, I imagine the best solution is to stack the bottles in layers and illuminate them from the side, using multiple bulbs at a regular distance, is that something possible?

I am thinking that if we first bottle the wines, in the four different bottles, and then scan them with the spectrometer, should we then keep ALL of them in boxes, in darkness for a few months before our next measurement, to rule out the influence of light for any deviation occurring during that period? or do you think it is enough to have the darkness control collection?

I think the control group kept in darkness will be enough. We have had meaningful results with 18 bottles, so 32 are a good number already. I am thinking, though, that wine undergoes quite a lot of changes in the first weeks after bottling, and we may risk to affect the experiment if we irradiate the bottles in a way that is heavily different from what the bottle sees in the cellar. So, I guess you have a point there. 

It is probably better to put all the bottles to a “zero point” before starting the proper long term experiment, also this could give us some flexibility in case the experiment is delayed for any reason.

  1. Which closures better promote desirable wine evolution?

    1. natural cork, portocork, synthetic, or screwcap

      1. http://realdelacruz.com.ar/productos_portocork_natural.php

      2. https://www.tapigroup.com

    2. Details about bottling 

    3. Capsule?

    4. We need to bottle them when the spectrometer is available to validate the initial state of each bottle.

  2. Can we create a digital fingerprint for a wine? 

    1. how does this fingerprint evolve over time? 

      1. post-Fermentation (2020)

      2. 1-year in stainless steel

      3. 1-year in new oak

      4. multi-year in bottles, stored at controlled temperature.

    2. 10000x sample size - cold storage, same light, blockchain-registered temperature

    3. how can this fingerprint be tracked on the blockchain?

    4. start experiment with 2018 and 2019, but start in earnest with 2020 vintage

    5. other wines (10's) available at winery and cold-storage

 

Shared considerations

  1. Location

    1. new room at winery

    2. costaflores

  2. Staffing for long term testing

    1. Yamil

    2. Carla

  3. Environmental constraints

    1. Temperature

    2. Light

    3. Air quality

    4. wine movement

    5. machine safety

  4. Costs 

    1. bottles

    2. closures

    3. bottling

    4. Test staff

    5. critic testing fees

    6. shipping

    7. labeling / packing for critics

    8. spoofing

      1. Funding

  5. Logistics

  6. Cross evaluation

    1. organoleptic

      1. schedule

      2. tasters

    2. chemical

      1. lab1 

      2. lab2

      3. lab3

    3. cromatographic

      1. lab1

      2. lab2

      3. lab3

  7. Research

    1. similar experiments and results

    2. positions of critics on numerical rankings

    3. list of caveats

  8. Documentation

    1. Video presentation (i.e. documentary)

    2. Public wiki

    3. Costaflores / VeriVin / 

  9. Reporting

    1. On-going study…no need to wait for the findings…we publish continuously?

    2. Promotion / marketing of experiment and results

    3. publication 

Sample matrix: Experiment 1 (lightstrike) 

Measurements note: (2/12/19) Measurement distance during first VeriVin visit was 13.14 mm . 

 

RED 3000K

Green

Blue UV

Cold White

Neutral White

Warm White

darkness

total

Green 1

12

12

12

24

24

24

24

128

Green 2

12

12

12

24

24

24

24

128

Brown

12

12

12

24

24

24

24

128

Transparent

12

12

12

24

24

24

24

128

total

48

48

48

96

96

96

96

512

15

F

111111111

111111110

111111101

111111100

111111011

111111010

111111001

111111000

111110111

111110110

111110101

111110100

111110011

111110010

111110001

111110000

111101111

111101110

111101101

111101100

111101011

111101010

111101001

111101000

111100111

111100110

111100101

111100100

111100011

111100010

111100001

111100000

 

 

511

510

509

508

507

506

505

504

503

502

501

500

499

498

497

496

495

494

493

492

491

490

489

488

487

486

485

484

483

482

481

480

14

E

111011111

111011110

111011101

111011100

111011011

111011010

111011001

111011000

111010111

111010110

111010101

111010100

111010011

111010010

111010001

111010000

111001111

111001110

111001101

111001100

111001011

111001010

111001001

111001000

111000111

111000110

111000101

111000100

111000011

111000010

111000001

111000000

 

 

479

478

477

476

475

474

473

472

471

470

469

468

467

466

465

464

463

462

461

460

459

458

457

456

455

454

453

452

451

450

449

448

13

D

110111111

110111110

110111101

110111100

110111011

110111010

110111001

110111000

110110111

110110110

110110101

110110100

110110011

110110010

110110001

110110000

110101111

110101110

110101101

110101100

110101011

110101010

110101001

110101000

110100111

110100110

110100101

110100100

110100011

110100010

110100001

110100000

 

 

447

446

445

444

443

442

441

440

439

438

437

436

435

434

433

432

431

430

429

428

427

426

425

424

423

422

421

420

419

418

417

416

12

C

110011111

110011110

110011101

110011100

110011011

110011010

110011001

110011000

110010111

110010110

110010101

110010100

110010011

110010010

110010001

110010000

110001111

110001110

110001101

110001100

110001011

110001010

110001001

110001000

110000111

110000110

110000101

110000100

110000011

110000010

110000001

110000000

 

 

415

414

413

412

411

410

409

408

407

406

405

404

403

402

401

400

399

398

397

396

395

394

393

392

391

390

389

388

387

386

385

384

11

B

101111111

101111110

101111101

101111100

101111011

101111010

101111001

101111000

101110111

101110110

101110101

101110100

101110011

101110010

101110001

101110000

101101111

101101110

101101101

101101100

101101011

101101010

101101001

101101000

101100111

101100110

101100101

101100100

101100011

101100010

101100001

101100000

 

 

383

382

381

380

379

378

377

376

375

374

373

372

371

370

369

368

367

366

365

364

363

362

361

360

359

358

357

356

355

354

353

352

10

A

101011111

101011110

101011101

101011100

101011011

101011010

101011001

101011000

101010111

101010110

101010101

101010100

101010011

101010010

101010001

101010000

101001111

101001110

101001101

101001100

101001011

101001010

101001001

101001000

101000111

101000110

101000101

101000100

101000011

101000010

101000001

101000000

 

 

351

350

349

348

347

346

345

344

343

342

341

340

339

338

337

336

335

334

333

332

331

330

329

328

327

326

325

324

323

322

321

320

9

9

100111111

100111110

100111101

100111100

100111011

100111010

100111001

100111000

100110111

100110110

100110101

100110100

100110011

100110010

100110001

100110000

100101111

100101110

100101101

100101100

100101011

100101010

100101001

100101000

100100111

100100110

100100101

100100100

100100011

100100010

100100001

100100000

 

 

319

318

317

316

315

314

313

312

311

310

309

308

307

306

305

304

303

302

301

300

299

298

297

296

295

294

293

292

291

290

289

288

8

8

100011111

100011110

100011101

100011100

100011011

100011010

100011001

100011000

100010111

100010110

100010101

100010100

100010011

100010010

100010001

100010000

100001111

100001110

100001101

100001100

100001011

100001010

100001001

100001000

100000111

100000110

100000101

100000100

100000011

100000010

100000001

100000000

 

 

287

286

285

284

283

282

281

280

279

278

277

276

275

274

273

272

271

270

269

268

267

266

265

264

263

262

261

260

259

258

257

256

7

7

11111111

11111110

11111101

11111100

11111011

11111010

11111001

11111000

11110111

11110110

11110101

11110100

11110011

11110010

11110001

11110000

11101111

11101110

11101101

11101100

11101011

11101010

11101001

11101000

11100111

11100110

11100101

11100100

11100011

11100010

11100001

11100000

 

 

255

254

253

252

251

250

249

248

247

246

245

244

243

242

241

240

239

238

237

236

235

234

233

232

231

230

229

228

227

226

225

224

6

6

11011111

11011110

11011101

11011100

11011011

11011010

11011001

11011000

11010111

11010110

11010101

11010100

11010011

11010010

11010001

11010000

11001111

11001110

11001101

11001100

11001011

11001010

11001001

11001000

11000111

11000110

11000101

11000100

11000011

11000010

11000001

11000000

 

 

223

222

221

220

219

218

217

216

215

214

213

212

211

210

209

208

207

206

205

204

203

202

201

200

199

198

197

196

195

194

193

192

5

5

10111111

10111110

10111101

10111100

10111011

10111010

10111001

10111000

10110111

10110110

10110101

10110100

10110011

10110010

10110001

10110000

10101111

10101110

10101101

10101100

10101011

10101010

10101001

10101000

10100111

10100110

10100101

10100100

10100011

10100010

10100001

10100000

 

 

191

190

189

188

187

186

185

184

183

182

181

180

179

178

177

176

175

174

173

172

171

170

169

168

167

166

165

164

163

162

161

160

4

4

10011111

10011110

10011101

10011100

10011011

10011010

10011001

10011000

10010111

10010110

10010101

10010100

10010011

10010010

10010001

10010000

10001111

10001110

10001101

10001100

10001011

10001010

10001001

10001000

10000111

10000110

10000101

10000100

10000011

10000010

10000001

10000000

 

 

159

158

157

156

155

154

153

152

151

150

149

148

147

146

145

144

143

142

141

140

139

138

137

136

135

134

133

132

131

130

129

128

3

3

1111111

1111110

1111101

1111100

1111011

1111010

1111001

1111000

1110111

1110110

1110101

1110100

1110011

1110010

1110001

1110000

1101111

1101110

1101101

1101100

1101011

1101010

1101001

1101000

1100111

1100110

1100101

1100100

1100011

1100010

1100001

1100000

 

 

127

126

125

124

123

122

121

120

119

118

117

116

115

114

113

112

111

110

109

108

107

106

105

104

103

102

101

100

99

98

97

96

2

2

1011111

1011110

1011101

1011100

1011011

1011010

1011001

1011000

1010111

1010110

1010101

1010100

1010011

1010010

1010001

1010000

1001111

1001110

1001101

1001100

1001011

1001010

1001001

1001000

1000111

1000110

1000101

1000100

1000011

1000010

1000001

1000000

 

 

95

94

93

92

91

90

89

88

87

86

85

84

83

82

81

80

79

78

77

76

75

74

73

72

71

70

69

68

67

66

65

64

1

1

111111

111110

111101

111100

111011

111010

111001

111000

110111

110110

110101

110100

110011

110010

110001

110000

101111

101110

101101

101100

101011

101010

101001

101000

100111

100110

100101

100100

100011

100010

100001

100000

 

 

63

62

61

60

59

58

57

56

55

54

53

52

51

50

49

48

47

46

45

44

43

42

41

40

39

38

37

36

35

34

33

32

0

0

11111

11110

11101

11100

11011

11010

11001

11000

10111

10110

10101

10100

10011

10010

10001

10000

1111

1110

1101

1100

1011

1010

1001

1000

111

110

101

100

11

10

1

0

 

 

31

30

29

28

27

26

25

24

23

22

21

20

19

18

17

16

15

14

13

12

11

10

9

8

7

6

5

4

3

2

1

0

 

15

Red

Red

Red

Red

Red

Red

Red

Red

Red

Red

Red

Red

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Suyai

14

Red

Red

Red

Red

Red

Red

Red

Red

Red

Red

Red

Red

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Giuliana

13

Red

Red

Red

Red

Red

Red

Red

Red

Red

Red

Red

Red

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Transparent

12

Red

Red

Red

Red

Red

Red

Red

Red

Red

Red

Red

Red

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Warm

Hoja Seca

11

Green

Green

Green

Green

Green

Green

Green

Green

Green

Green

Green

Green

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Suyai

10

Green

Green

Green

Green

Green

Green

Green

Green

Green

Green

Green

Green

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Giuliana

9

Green

Green

Green

Green

Green

Green

Green

Green

Green

Green

Green

Green

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Transparent

8

Green

Green

Green

Green

Green

Green

Green

Green

Green

Green

Green

Green

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Neutral

Hoja Seca

7

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Suyai

6

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Giuliana

5

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Transparent

4

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Blue

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Cold

Hoja Seca

3

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Suyai

2

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Giuliana

1

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Transparent

0

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Dark

Hoja Seca

 

31

30

29

28

27

26

25

24

23

22

21

20

19

18

17

16

15

14

13

12

11

10

9

8

7

6

5

4

3

2

1

0

 

Regularly, we measure all the bottles, but each trimester, we test 1 bottle of each set from each chamber (16 bottles), through a blind tasting and chemical analysis.

That would provide us with up to 8 years worth of wines to sample, though we would have a diminishing pool of each, after each trimester. 

Ideally, we wouldn’t run the experiment more than 5 years.

We may spot some outlier, so when the time comes we will have to decide if keeping monitoring this bottle or opening and test if it is faulted. For this reason it is reasonable to have some extra specimen. I think this is a good number.

Also, on a full day of measurements, we are able to test about 40/45 bottles, this means that we can test the whole lot in out 2 weeks in Argentina.

Don’t forget, we also will have 17,000 bottles of the same wine, bottle at the same time, in one of the bottles, in darkness. So we also have that control to work with.

This is a hugely interesting database, as it sill allow to challenge chemometrics over a large batch!! Definitely worth trying

Also. I would be interested in testing a batch of (let’ say) 32 bottles 

Sample matrix: Experiment 2 (closure) 

 

Bottles

Natural cork

32

Portocork

32

Tapicork

32

Screwcap

32

total

128

 

Preliminary testing

VeriVin Through-Bottle Analysis of MTB Wines – A first Test – 17/3/19

CONCLUSIONS

Simply put - MTB wines are classifiable using our Raman probe and chemometrics analysis. We can conduct larger scale experiments that could prove useful to MTB and other wine productions. VeriVin is working on figuring out how far classification can go (vintages, casks, grapes etc.), what the 'resolution' of these differentiations are, and how to mitigate the influence of coloured bottle glass. For significantly different bottles, we can already successfully classify bottles by the combined signal of contents + container. This might be useful in and of itself for identification purposes, but our goal is to classify bottles independently by contents and by container. In other words, we would like to tell you what wine and what bottle it is, independently of one another.  This is one of the reasons we are working on mitigating the influence of the glass, which is more significant with coloured glass. The other effect that coloured glass has on our analysis, and one that we are also working to mitigate, is more fundamental - and that is that coloured glass absorbs a large portion of our exciting laser as well as the Raman scattered light collected.  Sometimes this absorption is so high that it does not yield a strong enough signal to be useful and hence does not allow us to collect data. Our estimate is that we can currently test about 60% of all bottles, and will be increasing that percentage significantly. 

Experiment / Analysis Walkthrough

In this first experiment all measurements have been taken through the same transparent bottle.

 

Definition of a measurement: Data gathered with VeriVin’s Raman probe

The following data was taken;

- on the 30th of April preliminary measurements of MTB2014-1 through a transparent container

- on the 10th and 13th of May, two sets of measurements of wines MTB2012-1, MTB2014-1, MTB2014-2, MTB2016-1 and MTB2017-1

 

The first data set is used to create a chemometrics model (PLSDA – Partial least squares discriminant analysis) and the second data set is tested on said model. A data set consists of multiple measurements taken at different times, with different spectral baselines and probing different spots on the test-bottle. We were able to successfully determine which wine was scanned when applying this data to our model – classification successful. -1 and -2 signifies two different bottles, which in the case of MTB2014-1 and -2, had a sensory (taste-able) difference.

Since the final output is a fairly mundane table of classification as shown here, we detail some of the actual analytical components used within the model.

 

A First Simple Model (figures right)

Even when only displaying two of the 3 latent variables this model uses, the measurements cluster into areas of classification. All data points are correctly classified in the results. Even two different bottles of the same vintage are classifiable. Note that even though MTB2014-1 and -2 are shown in different colours the PLSDA model is given the instruction to class them together – visible in the results table. When classifying by both MTB2014-1 and MTB2014-2 there is a slight confusion between the two. This is expected, however if we were to establish a model to probe the difference between individual bottles from the same batch we would fine tune it and depending on actual physical variability the model would succeed. Here, fine-tuning means that spectra of different classes that are too similar would have to be excluded from the model - although they could be used as test data.

For further clarification; latent variables can be thought of as components, which each of your spectra get broken down into. That means if you sum the right amount of these components, you get back to your original measurement (ideally).  How much of these common components each of your measurement (spectrum) contains is displayed in the graphs above. There are more than only three latent variables and depending on the task and size of the model there might be many more. For illustrative purposes a very simple model with only three substances to be classified is shown.

 

A Spectrum Example

This is what a single data point on these Latent-Variable graphs actually looks like. A spectral Raman response of 512 data points, with a wavelength assigned to each.

 

 

 

Adding more/ similar wines to the model (figures right)

MTB2016 is not as easily distinguishable. Note that the model changes as it is now built with MTB2016 data, meaning that the common components the algorithm searches for also change. A more detailed look into the latent variables is required to visualise the classification. The PLS algorithm in this case looks at five latent variables at the same time but some of the models we use in these small experiments even have up to 8 or more. Of course this cannot be visualised in one graph but it is mathematically necessary to distinguish some test substances. Below an example of how MTB2016 yields similar result to MTB2014 when looking at these LV’s. Looking at multiple LVs (3D right), clearly classifies them separately and enables us to build a model.

Lastly, we apply our test data to this model again and  in the results table all of them are classified correctly.

 

Note that measurements can vary and some are more clearly classified than others. To ensure that one measurement is classified correctly, we can set a threshold, which the measurement has to pass to classify as wine X. An ideal result has measurements of one class above the threshold and all others below, as shown here (note, 2014-1 and -2 as separate classes). Keep in mind the lowest (blue) data point here, could be under the threshold for some measurement and then would be marked as unclassified if not going above the threshold for any class.

 

Measurements taken two weeks previously applied to the first simple model (no 2016):

 

The model results table correctly classifies this wine. However, over the time the bottle was open, the wine may have changed, for it appears outside the calibration MTB2014-1 data shown above. There are other experimental reasons for an overtime drift but these were due to alignment changes, which will clearly not occur in the final device.