I have generated a MLFF for Ge-Te alloys with the intention of using to make melt-quenched amorphous samples. This involves heating the sample above the melting point and then rapidly cooling it (at a rate, for example of 15K/ps)
For my first try, I used the following temperature ramp (and a NPT ensemble). I will attach a typical INCAR file. A refit run was completed at the end of the training. I have attached the LCONF lines from the ML_LOGFILE corresponding to each run. I noticed that upon quenching GeTe6 from melt, I would encounter isolated Te atoms in the melt-quench material which is are unlikely to exist. What suggestions would you give to improve the training? Should I use longer runs? The training was done on a small set of 54 atoms. The densities (NPT) seemed in reasonable agreement with experiment. The experimental melting point is roughly at 1000 K and I am interested in Te-rich compositions so 1500K is well above the melting point. I intended to randomize the initial structure using a temperature slightly higher than the melting point. (Is it too high for training?)
For reference, I have also loaded plots of the err_beef_ctifor values vs MD step in the attachment.
1. 400-600K 2,000 steps LCONF 2000 Ge 423 429 Te 411 421
2. 600-800K 5,000 steps LCONF 5000 Ge 657 704 Te 624 668
3. 1000-1200K 5,000 steps LCONF 5000 Ge 798 805 Te 733 741
4. 1200-1400K 5,000 steps LCONF 5000 Ge 1106 1113 Te 1003 1013
5. 1400-1600K 5,000 steps LCONF 5000 Ge 1692 1724 Te 1480 1506
6. 1500-1500K 10,000 steps LCONF 10000 Ge 4701 4753 Te 4440 4474
7. 1500-500K 10,000 steps LCONF 3687 Ge 8000 8027 Te 5672 5696
ALGO = Fast
BMIX = 1
ENMAX = 400
EDIFF = 1E-6
IBRION = 0
ISIF = 3
ISMEAR = 0
ISPIN = 1
ISYM = 0
KBLOCK = 100
LASPH = True
LCHARG = False
LMAXMIX = 4
LORBIT = 11
LPLANE = False
LREAL = False
LSCALU = False
LWAVE = True
NBLOCK = 1
NELM = 500
NELMIN = 4
NSW = 2000
POTIM = 2.0
PREC = Normal
SIGMA = 0.02IVDW = 12
MDALGO = 3 ! Langevin thermostat
LANGEVIN_GAMMA = 10 10 ! friction
LANGEVIN_GAMMA_L = 10 ! lattice friction
PMASS = 10 ! lattice mass
TEBEG = 400 ! temperature
TEEND = 600KPAR = 8
NCORE = 4! machine learning
ML_MODE = train
ML_LMLFF = T
ML_ISTART = 0
ML_WTSIF = 2