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travail    音标拼音: [trəv'el]
n. 分娩的痛苦,阵痛,辛劳
vi. 发生阵痛,辛劳

分娩的痛苦,阵痛,辛劳发生阵痛,辛劳

travail
n 1: concluding state of pregnancy; from the onset of
contractions to the birth of a child; "she was in labor for
six hours" [synonym: {parturiency}, {labor}, {labour},
{confinement}, {lying-in}, {travail}, {childbed}]
2: use of physical or mental energy; hard work; "he got an A for
effort"; "they managed only with great exertion" [synonym:
{effort}, {elbow grease}, {exertion}, {travail}, {sweat}]
v 1: work hard; "She was digging away at her math homework";
"Lexicographers drudge all day long" [synonym: {labor},
{labour}, {toil}, {fag}, {travail}, {grind}, {drudge},
{dig}, {moil}]

Travail \Tra`vail"\, n. [Cf. F. travail, a frame for confining a
horse, or OF. travail beam, and E. trave, n. Cf. {Travail},
v. i.]
Same as {Travois}.
[Webster 1913 Suppl.]


Travail \Trav"ail\, v. i. [imp. & p. p. {Travailed}; p. pr. &
vb. n. {Travailing}.] [F. travailler, OF. traveillier,
travaillier, to labor, toil, torment; cf. Pr. trebalhar to
torment, agitate. See {Travail}, n.]
1. To labor with pain; to toil. [Archaic] "Slothful persons
which will not travail for their livings." --Latimer.
[1913 Webster]

2. To suffer the pangs of childbirth; to be in labor.
[1913 Webster]


Travail \Trav"ail\, v. t.
To harass; to tire. [Obs.]
[1913 Webster]

As if all these troubles had not been sufficient to
travail the realm, a great division fell among the
nobility. --Hayward.
[1913 Webster]


Travail \Trav"ail\ (?; 48), n. [F. travail; cf. Pr. trabalh,
trebalh, toil, torment, torture; probably from LL. trepalium
a place where criminals are tortured, instrument of torture.
But the French word may be akin to L. trabs a beam, or have
been influenced by a derivative from trabs (cf. {Trave}). Cf.
{Travel}.]
1. Labor with pain; severe toil or exertion.
[1913 Webster]

As everything of price, so this doth require
travail. --Hooker.
[1913 Webster]

2. Parturition; labor; as, an easy travail.
[1913 Webster]

87 Moby Thesaurus words for "travail":
accouchement, be confined, bear, bear a child, bear young, birth,
birth throes, birthing, blessed event, calve, cast, childbearing,
childbed, childbirth, confinement, delivery, dig, dirty work,
donkeywork, drop, drudge, drudgery, employment, fag, farrow,
fatigue, fawn, foal, genesis, give birth, giving birth, grind,
grub, hammer, hammer away, handiwork, handwork, hatching, have,
have a baby, have young, having a baby, industry, kitten, labor,
lamb, lick, lick of work, lie in, litter, manual labor, moil,
multiparity, nascency, nativity, pains, parturition, peg, peg away,
plod, plug, plug along, plug away, plugging, pound away, pup,
rat race, scut work, slavery, slog, spadework, stroke,
stroke of work, struggle, sweat, task, the Nativity, the stork,
throw, tiresome work, toil, treadmill, wade through, whelp, work,
work away, yean


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